Buscar en
Journal of Innovation & Knowledge
Toda la web
Inicio Journal of Innovation & Knowledge Knowledge absorption capacity's efficacy to enhance innovation performance t...
Journal Information
Vol. 7. Issue 3.
(July - September 2022)
Share
Share
Download PDF
More article options
Visits
1019
Vol. 7. Issue 3.
(July - September 2022)
Open Access
Knowledge absorption capacity's efficacy to enhance innovation performance through big data analytics and digital platform capability
Visits
1019
Adnan Khana,b, Meng Taoc,
Corresponding author
mengtao@dufe.edu.cn

Corresponding author.
a School of Management, Jiangsu University, Zhenjiang, 212013, China
b School of Business Administration, Dongbei University of Finance and Economics, Dalian, China
c Dean at International Business College, Dongbei University of Finance and Economics, Dalian, China
This item has received

Under a Creative Commons license
Article information
Abstract
Full Text
Bibliography
Download PDF
Statistics
Figures (4)
Show moreShow less
Abstract

The 2018 Global Innovation Index ranks Pakistan 118 out of 126 in innovation. One of the main reasons why developing countries, such as Pakistan, fail to innovate is their improvisation of astute and concurrent knowledge. This study explores the contemporary hurdles that lead to manufacturing firms' low agility and innovation performance. Based on the theory of dynamic capability view and the theory of absorptive capacity, we propose that the knowledge absorption capacity of firms can help them organize or utilize dynamic capabilities, such as big data analytics and digital platform capability, to enhance their agility and innovation performance. However, in the presence of a diversified organizational culture (i.e., flexibility orientations and data-driven culture), the desired outcomes may be affected. For this purpose, this study performed a questionnaire survey to collect data for validating the theoretical model. The collected responses from 325 manufacturing firms were analyzed using structural equation modeling, and empirical results reveal a positive relationship between the knowledge absorption capacity, agility, and innovation performance of firms mediated by big data analytics and DP capabilities. Flexibility orientations also showed a significant moderating role, but the role of data-driven culture was not significant. Statistical results reject the hypothesis. This study enriches the scope of the theories mentioned above and comes up with several other interesting theoretical and managerial implications valuable for academicians and policymakers.

Keywords:
Knowledge absorption capacity
Big-data analytics capability
DP capability
Firm's agility
Innovation performance
Data-driven culture
JEL codes:
O3
O320
O310
Full Text
Introduction

The 2018 Global Innovation Index names Pakistan as one of the least innovative countries globally; out of 126 countries, Pakistan only ranked 117th in 2017 and 113th in 2018 (Global Innovation Index, 2018). Similarly, the manufacturing industry only contributes 14% to the total GDP of Pakistan (Economic Survey of Pakistan, 2019). Developing countries have to deal with issues in their technologies, human skills, institutional mechanisms, and infrastructures that hinder their innovation efficiency. Innovation is often explained as a radical and incremental innovation (Varis & Littunen, 2010). Similarly, innovation performance may be defined as upgrading the firm's products, services, or processes (Flor, Cooper, & Oltra, 2018).

The manufacturing sector of Pakistan contributed about 13.5% to 13.8% on average to the country's GDP over the past decade. However, this sector only witnessed a 13% growth in the latest fiscal year. Both large-scale manufacturing (LSM) and small-scale manufacturing (SSM) contribute to the manufacturing sector and GDP of Pakistan; LSM contributes about 78% and 10.2% to manufacturing and GDP, whereas SSM contributes about 2.0% in both (Economic Survey of Pakistan, 2019). The inconsistent growth of the manufacturing sector of Pakistan may be ascribed to several reasons, but no previous research has explored this problem in-depth. This empirical work aims to solve this problem by boosting the innovation performance of manufacturing firms.

Specifically, this study proposes that manufacturing firms organize dynamic capabilities that can enhance their agility and innovation performance, such as big data analytics capability (BDAC) and DP capability (DPC). BDA has changed the traditional dynamics of businesses and significantly improved their performance. According to Dubey et al. (2019), big data and predictive analytics can improve the performance of manufacturing firms and enhance both their organizational performance (Purgat & Mrozek, 2018) and competitive advantage (Shan, Luo, Zhou, & Wei, 2019). Previous studies have highlighted the influential role of BDAC. However, no study has explored the mediating role of BDAC in the relationship between the knowledge absorption capacity (KAC) and FA of an organization. Considering the impact of BDAC on both academia and industry, this research sheds light on the mediating role of the BDAC of manufacturing firms in enhancing FA and innovation performance.

DPs (DPs) are replacing the traditional ways of interaction between businesses and end-users. For example, IOS and Android platforms provide multiple features and apps with convenience, whereas payment platforms, such as Alipay, WeChat, PayPal, and Apple Pay, offer an unmatchable and valuable contribution to the financial industry. Peer-to-peer DPs, such as Airbnb, Uber, and Task Rabbit, are also gaining popularity. DPs can be used as a dynamic capability for manufacturing firms to enhance their agility and innovation performance. This study distinguishes itself from the extant literature by exploring the mediating role of dynamic capabilities (BDAC and DPC).

Furthermore, this study proposes that the attributes of a firm's dynamic capabilities are established due to this firm's KAC, which may urge the firm to organize dynamic capabilities. KAC can be defined as a firm's ability to acquire, assimilate, transform, and exploit knowledge to bolster its performance. Acquisition and assimilation are associated with a firm's potential absorptive capacity, whereas exploitation and transformation are associated with its realized absorptive capacity. Previous studies have explored the versatile outcomes of AC, such as knowledge utilization (Vasudeva & Anand, 2011), OAC and responsiveness of firms (Liao, Welsch, & Stoica, 2003), KAC and environmental performance (Shahzad et al., 2020), and integration of external knowledge and AC to improve radical innovation (Flor et al., 2018).

Integrating firms' dynamic capabilities to enhance their FA and innovation performance should also be considered under the influential role of organizational culture (OC). OC will either support the flow of knowledge or vice versa, given that culture is unavoidable in any organizational outcome (Smircich, 2017). This research expands the idea of Dubey et al. (2019), who argued that OC facilitates the transformation of BDAC to enhance an organization's performance. This study defines two critical traits of OC, namely, flexibility orientations and data-driven culture (Dubey et al., 2019). An organization's flexible orientations will influence the effectiveness of KAC in building BDAC (i.e., flexible orientations will positively affect manufacturing firms to equip themselves with BDAC). Meanwhile, control orientations, where firms follow the norms and adopt typical decision-making mechanisms from the top management, may not drive firms to equip themselves with any ICT-enabled capabilities, such as BDAC. Therefore, this study further broadens the discussion on the role of DDC as a moderator and mediator in the relationship between BDAC and innovation performance. DDC may be influential in either way to transform the outcomes of BDAC and enhance innovation performance. Given the severity of ongoing issues related to the pace of innovation, this study aims to determine how manufacturing firms' agility and innovation performance can be enhanced. The following research questions are therefore proposed:

  • According to the dynamic capability view (DCV), what are the roles of BDAC and DPC in enhancing the agility of firms?

  • How does FA enhance the innovation performance of manufacturing firms?

  • How does OC (flexibility orientations) moderate the relationship between knowledge absorption capacity and BDAC, and how does DDC moderate the relationship between BDAC and innovation performance?

Theory of absorptive capacity

In 1990, Cohen and Levinthal introduced the AC theory to explore a firm's capacity to recognize and value knowledge from external sources, organize and decode such knowledge, and use it effectively to achieve its goals (Tseng, Pai, & Hung, 2011). In the proposed conceptual model, KAC is derived from the theory of AC.

Dynamic capability view

DCV elaborates on the theme of a resource-based view and posits that “Dynamic capabilities bridge the gap between the firm's resources and changing business environment” (Barney, 1991b). Unlike RBV, DCV emphasizes building and adopting the necessary capabilities in response to external environmental changes. BDAC and DPC are extracted from DCV to represent the dynamic capabilities in this study.

HypothesesKnowledge absorption capacity and big data analytics capability

AC is a vital capability of firms to organize several needed capabilities (Shahzad et al., 2020). BDAC has been used in product or service innovation, production and manufacturing, marketing and management, and business growth (Ritala, Olander, Michailova, & Husted, 2015). A firm's performance is highly dependent on its effectiveness in processing and interpreting data (Premkumar, Ramamurthy, & Saunders, 2005). A firm needs a set of tangible and intangible resources in technology, culture, technical and managerial skills, and human resources (Chen & Storey, 2012; Tambe, 2014). Janssen, van der Voort, and Wahyudi (2017) argued that the analytic capability complements big data management. Moreover, the performance of a firm is highly dependent on its effectiveness in processing and interpreting data (Premkumar et al., 2005).

Big data is becoming an integral component of Industry 4.0, a concept that a German industrialist proposes to represent the fourth industrial revolution (Shamim et al., 2019). Developing economies attempt to accomplish business competency through value creation by using big data (George, Haas, & Pentland, 2014). Moreover, the view of DCV underscores the significance of recreating and renewing the strategic capabilities of a firm to keep abreast with the changing technology-driven business environment (Pisano, 2017). Although big data helps policymakers decide based on what they know instead of what they believe (McAfee & Brynjolfsson, 2012), the relevant KAC of a firm facilitates the exploitation of BDAC (Zeng & Glaister, 2018).

Based on these arguments, the following hypothesis is proposed:

H1:KAC will positively affect the BDAC of manufacturing firms.

Knowledge absorption capacity and DPs capability

Knowledge absorption is a continuous process; modern firms have developed multiple channels to absorb concurrent knowledge. A firm's capacity to use such knowledge greatly depends on exploiting existing knowledge. Apart from big data, machine learning, artificial intelligence, and the Internet of Things, DPC also prioritizes resource allocation. Most companies competing in a digital ecosystem (Subramaniam, Iyer, & Venkatraman, 2019) are based on AC reflecting their competency to acquire, integrate, transform, and utilize external knowledge and affecting platform capability's adeptness (Ali, Seny Kan, & Sarstedt, 2016; Delmas, Hoffmann, & Kuss, 2011).

With emerging technologies, the chances of achieving an optimal advantage depend on establishing a DP for understanding evolving technologies and on the capacity of a firm to undertake the risk of investing in such a platform to improve its business outcomes (Wang, Liang, ZHONG, XUE, & XIAO, 2012). A well-equipped platform supports firms in standardizing, managing, and allocating unprecedented levels of data (Yoo, Henfridsson, & Lyytinen, 2010). The platform capability of digitization not only has changed the means of building a competitive edge over the past two decades (Parker et al., 2016c) but also plays a vital role in defining the value proposition for all sizes of firms by allowing them to seek and handle data and information (Cenamor, Rönnberg Sjödin, & Parida, 2017). Roberts and Grover (2012) theorized and discovered that DPC allows firms to sense and answer the demands and needs of customers commendably and thereby depends on the absorptive capacity of these firms. Based on these arguments, the following hypothesis is proposed:

H2:KAC will positively affect the DPC of manufacturing firms.

Knowledge absorption capacity and firm's agility

KAC utilizes different learning approaches to enhance a firm's performance, such as exploitative, transformative, and exploratory learning (Lane, Koka, & Pathak, 2006). Assimilation and knowledge acquisition can be linked to potential KAC, whereas a firm's ability to transform and assimilate this knowledge into its operations can be linked to realizing KAC (Ali et al., 2016; FLATTEN, GREVE, & BRETTEL, 2011). Firms that solely focus on exploitations may face difficulties sustaining their competitive performance (Volberda, Foss, & Lyles, 2010). The indirect relationship between KAC and FA has been measured in previous research. For example, Overby, Bharadwaj, and Sambamurthy (2006) found a connection between knowledge reach and richness of agility. Trantopoulos, Von Krogh, Wallin, and Woerter (2017) studied the relationship between IT and knowledge capabilities on the agility of a firm, and they highlighted some salient features of agile businesses, such as meeting customer requirements quickly, managing new products strategically, and completing organizational tasks on time. Therefore, this study assumes that KAC develops a proactive conception to respond to or organize dynamic capabilities, such as FA. The following hypothesis is then put forward:

H3:KAC will positively affect the FA of manufacturing firms.

Big data analytics capability and firm's agility

Agility refers to a firm's ability to ascertain new opportunities, utilize its current knowledge, and adapt to abrupt business changes. Several IT-enabled studies argue that these capabilities positively influence firms' outcomes (Weill, Subramani, & Broadbent, 2002). Apart from the conventional agility concepts, a firm should also have the expertise to sense external changes and promptly respond to them (Seo, Paz, & A, 2008). Zhang and Dhaliwal (2009) investigated how the application of IT can enhance firm performance, whereas Bharadwaj (2000) examined the significance of information technology adoption as one of the primary differentiators among firms with varying performance levels. The firm's agility resulting from its IT-enabled skills driven by big data interventions is mainly defined as its analytic expertise in information management (Kiron, Prentice, & Ferguson, 2014; Pavlou & Sawy, 2010). Big data analytics involve successfully processing data with large amounts, high velocity, and diverse types (Wamba et al., 2017), which improves FA. The following hypothesis is then proposed:

H4:BDAC will positively affect the FA of manufacturing firms.

DP capability and firm's agility

DPs play essential roles in various fields, ranging from functional technology to strategic management (Yeow, Soh, & Hansen, 2018). Technology platforms provide digital options for firms that enable them to react effectively to business or economic changes. Firms with DPCs enjoy the competitive edge of creating new networks to access their customers, integrating themselves into their supply chain partners in real-time, improving the efficiency of their domestic operations, and offering their customers modern digital services and products (Wheeler, 2002). Agility can be observed among those firms with superior platform capabilities to readily address their business process digitally (Sambamurthy, Bharadwaj, & Grover, 2003). DPs connect firms to various external information sources, allow them to establish ties in an inter-organizational network, and address their structural shortcomings. With the help of DPs, firms tend to evaluate the external market trends and respond to them rapidly by formulating strategies (Chi, Ravichandran, & Andrevski, 2010). Those firms connected to the digital network help other firms receive up-to-date information. DPC allows firms to rapidly develop or improve their products or services in a globally challenging market (Kayworth, Chatterjee, & Sambamurthy, 2001).

The rapid development of DPs is evident in almost every industry. DPs have opened new corridors of thinking beyond the traditional business approaches. These platforms help firms connect to their customers and other businesses simultaneously and improve their products and services (Xiao, Tian, & Mao, 2020). Based on these arguments, the following hypothesis is proposed:

H5:DPC will positively affect the FA of manufacturing firms.

Firm's agility and innovation performance

Sambamurthy et al. (2003) defined agility as the capacity of a firm to understand and respond to its customer demands, operational agility as a firm's expertise in structuring operation procedures, and partnering agility as the competency of a firm in forming business relationships. The competitive environment constantly challenges businesses. The literature on FA reveals that agility affects firm performance. Specifically, agility can help firms gain dexterity and speed (Singh et al., 2013), which are vital, especially in a rapidly changing global environment (Heckler, Illinois, & Powell, 2016). A firm's agility also reflects the excellence of a firm in detecting and entering niche markets to redefine its business opportunities. Therefore, agility adds to a firm's innovation performance by addressing and finding solutions to problems and responding to the challenges in the market (Song, 2015). FA also has an imperative impact on a firm (Dove & Palmer, 2004), especially on its performance outcomes than its structural or operational excellence (Yauch, 2011). Côrte-Real, Oliveira, and Ruivo (2017), Wagner, Beimborn, and Weitzel (2014), and Yusuf et al. (2014) explored the influence of agility on business and innovation performance. The following hypothesis is then proposed:

H6:FA will positively affect the innovation performance of manufacturing firms.

BDAC and innovation performance

Over the last few years, big data has come to light as an emerging frontier of efficiency and opportunity to transform businesses. The ways of doing business have markedly changed due to BDAC (Barton & Court, 2012). Previous studies show that BDAC can transfigure management and practice (George et al., 2014), which are substantial for innovation and considered the “fourth archetype” in science. According to the theoretical foundation of DCV, BDAC refers to an organization's peculiar capabilities for superlative price setting and improving the quality and contributing to the innovative performance of firms. By using the information technology ecosystem, organizations can transform data into a resource that they can analyze during decision making (Rivera & Shanks, 2015). Data analytics serves as a competitive discriminator (Jeble et al., 2018) that positively affects the firm's innovative performance (Ramakrishnan, Jones, & Sidorova, 2012). Previous research shows that BDAC innovates the entire business system from product to process and from the infrastructural system to the segmental one (Caputo, Marzi, & Pellegrini, 2016). Therefore, in fostering structural innovation, the foundation of data based on BDA plays an influential role (Tempini, 2017), whereas the personalization paradigm facilitates the innovation of services (Ng & Wakenshaw, 2017). Big data extends a company's capabilities and leverages innovation in business models (Vecchio et al., 2018). BDAC shows potential in disrupting the innovative performance. The following hypothesis is then proposed:

H7: BDAC will positively impact the innovation performance of manufacturing firms.

DP capability and innovation performance

DCV discusses the higher-order practices of operational capabilities to enlarge the scope and adapt and adjust the existing operational skills of a firm for value creation and value addition (Pavlou & Sawy, 2010). However, as the evolution and amalgamation of technologies in every field complement the performance of firms, the implementation of information and communication technology firmly positions itself on a further higher order of dynamic capability view (Parida & Ortqvist, 2015).

Digital transformation changes the procedures, routines, or processes based on a technological foundation and is driven by information technology. DPs have emerged in response to the technical expansions and development triggered by the rapid spread of multiplexed technologies (Parker et al., 2016c). Therefore, designing and embracing platform capability can help firms witness a radical innovation fueled by digitization. This innovation drive emphasizes the importance of focusing on and exploring opportunities for DPs. The following hypothesis is then proposed:

H8: DPC will enhance the innovation performance of manufacturing firms.

Mediation of BDAC between KAC and FA

Previous studies suggest that information technology empowers the agility of firms by accelerating their decision-making process, simplifying their communication, and allowing them to respond to changes swiftly. A unified platform can be established using big data and facilitate the standardization and fusion of these data, which is essential in dexterity. Integrating big data enables firms to gather and distribute information quickly. This capability also allows firms to access real-time, persistent, and comprehensive data, which can help them make quick, efficient, and appropriate decisions (Gupta & George, 2016). The BDAC guarantees extensive data handling and integrates diversified data coming at various speeds, pushing firms to be more agile in responding to this filtered stream of data (Wamba et al., 2017). KAC helps firms organize their smart capabilities, which can improve their performance. BDAC urges firms to make decisions based on factual and accurate information, paving the way for knowledge to come through their KAC. Based on these arguments, the following hypothesis is proposed:

H9:BDAC will mediate the relationship between KAC and FA.

Mediation of DPC between KAC and FA

The introduction of warehouse management platforms has scaled the flexible capacity of repositories, yet the internet has channelized the market to a higher order. Although information technology competency leverages firms to be more agile, the degree to which these options can be employed depends on these firms' knowledge absorption and utilization capacity. With the emergence of new technologies, the opportunities for businesses to establish an edge have increased; these firms must possess knowledge management capacity and prevision to understand the significance of emerging technologies. Sambamurthy et al. (2003) explored digitized knowledge capital using platforms to produce knowledge warehouses and share this knowledge throughout an organization to increase its agility. IT-enabled capability refers to developing a DP that reflects the flexibility of technology infrastructures and applications in addressing external business requirements. The risk of long-term stiffness can be overcome using DPs; accordingly, using these platforms has become an important strategic priority for several organizations. Firms discover their agility by utilizing the data and information they collect from DPs (Cenamor, Parida, & Wincent, 2019). Upgrading from legacy systems to internet-based DPs provides these firms with enough flexibility to digitize their processes. Previous studies have proposed diverse definitions of an ecosystem networked by DPs. A DP can be defined as a collection of digital resources, including content and services, that help promote valuable interactions between customers and suppliers (Parker, Van Alstyne, & Choudary, 2016a). DPs do not maintain physical resources, such as infrastructure. They help gain market insights in real-time, support the development of products and services, and allow firms to restructure their processes quickly. DPs are connected directly to consumers, providing firms with a gateway to develop their potential absorptive capacity to acquire, assimilate, and identify knowledge from external sources (Zahra & George, 2002). The following hypothesis is then proposed:

H10:DPC will mediate the relationship between the KAC and FA of manufacturing firms.

The moderating role of flexibility orientations

An organization's culture is fundamental in determining its business performance and long-term competitive strength. Meanwhile, its performance is substantially dependent on the philosophy and beliefs of work established by enterprise managers. The efficacy of maintaining strong communication and improving performance outcomes is contingent upon integrating a thriving organizational culture (Idris, Wahab, & Jaapar, 2015). The management and decision-makers typically face many challenges in establishing a flourishing organizational culture, which is integral to improving productivity and performance (Kenny, 2011). However, only a few studies have explored the effects of organizational culture on knowledge absorption and facilitating the adoption of information technology. Although, the previously examined constructs, i.e., knowledge absorption management as the dexterity of valuable information recognition, apprehension and its application to the commercial purpose with the corporate culture, which is a paradigm of ideas and values that frame the performance of an organization, potentially affect the affluent knowledge application. Developing BDAC requires a combination of tangible and intangible resources in line with the decision-making capacity that has fostered a flexible and swift culture that supports factual-based judgments. The following hypothesis is then proposed:

H11:Flexibility orientations (control orientations) will negatively moderate the relationship between KAC and BDAC, whereas flexible orientations will positively moderate the relationship between KAC and BDAC.

The moderating role of DDC

Deshpande, Farley, and Webster (1993) argued that organizational culture is vital in deciding how a firm responds to external events and strategies. Organizational culture determines the strategy and the steps taken by a firm in response to technological and business competitions. Technology-oriented firms typically rely on the information and knowledge coming from new resources by engaging in BD analytics. BDAC improves innovation performance based on the decisions made after analyzing massive datasets. Given its value, BD has attracted much attention from service-providing and product-manufacturing firms (Constantiou & Kallinikos, 2015). Nevertheless, extracting real value from BD depends on the DDC of a firm. Several investments in BD projects have failed to draw the desired output due to the lack of an adequate data-driven culture (Lehrer, Wieneke, vom Brocke, Jung, & Seidel, 2018).

Following the logic of DCV, BDAC gives firms a competitive advantage in a high-order construct that is greatly influenced by their strategic resources and data-driven decision-making capability to achieve an excellent performance. A detailed review of the literature on environmental and social sustainability, BDAC, and predictive analytics reveals that core insights are driven by data-encompassing interdepartmental cooperation in the modern economy. Manufacturing and technology-oriented industries depend on consumer data, competitive market orientation, and financial and economic information to identify the traits and hallmarks they can add to their future products. The following hypothesis is then proposed:

H12:DDC will positively moderate the relationship between BDAC and innovation performance (Figure 1).

Methods

This research is conducted based on a simple random sampling technique. In the first stage, the manufacturing firms and their relevant statistics were collected from the official websites of the Government of Pakistan, such as the Economic Survey of Pakistan and the Statistics Bureau of Pakistan. An ISO-certified data collection firm was also recruited to collect data from the senior, middle, or frontline managers of manufacturing firms, given their excellent knowledge about their operations. This firm used a self-administered questionnaire designed by the research team to collect data from the target respondents. The recruited managers were contacted by email and other social media platforms. Three hundred forty-seven responses were received, yielding a low response rate of 14%, which was understandable given the COVID-19 pandemic. Among these 347 responses, only 325 were deemed appropriate for the final analysis. Table 1 presents details on Pakistan's manufacturing industry, the research population, and the profiles of the respondents.

Table 1.

Demographics.

Details of Demographics (n = 325)
Attributes  Distribution  Percentage 
Job Title
Senior Manager  27  8% 
Production Manager  40  12% 
Supervisor  56  17% 
Middle Manager  117  36% 
Frontline Manager  85  26% 
Education
Technical  41  13% 
Graduation  104  32% 
Master  162  50% 
Above Master (MS/MPhil)  18  6% 
Gender
Male  232  71% 
Female  93  29% 
Industry
  Textile  37  11% 
Coal and Petroleum  20  6% 
Automobiles  36  11% 
Fertilizers  30  9% 
Wood and Papers  31  10% 
Food and Beverages  32  10% 
Pharmaceutical  35  11% 
Surgical Instruments  23  7% 
Engineering Products  21  6% 
Chemical Products  17  5% 
Sports Good  30  9% 
Misc. Manufacturing  13  4% 
Ownership
  Public Firms  97  30% 
  Private Firms  228  70% 
Measurement items

All constructs used in this study were adapted from the literature and measured on a five-point Likert scale ranging from “strongly disagree” to “strongly agree.” KAC was adapted from Jansen, Van Den Bosch, and Volberda (2005) and Shahzad et al. (2020). Sample items included “We have effective routines to identify, value, and import new information and knowledge.” BDAC was adapted from Côrte-Real, Ruivo, Oliveira, and Popovič (2019) and Chen, Preston, and Swink (2015). Sample items included “Our enterprise uses BDA purchasing analytics for purchasing.” DPC was adapted from Cenamor et al. (2019). Sample items included “We have developed DPs for consumers to share prior experiences, knowledge, and expertise.” FA was adapted from Tallon and Pinsonneault (2011) and Ashrafi, Zare Ravasan, Trkman, and Afshari (2019). Sample questions included “Adopt new technologies to produce better, faster, and cheaper products and services.” FO was adapted from Dubey, Gunasekaran, and Childe (2019). Sample items included “Our firm follows formal rules and policies which involve less risk.” DDC was adapted from Gupta and George (2016) and Dubey et al. (2019), with sample questions including “We base most of the decisions on data rather than instinct.” IP was measured with the sample item “In terms of novelty, our firm is always the first one to come up with new ideas about the product", adapted from Maurer, Bartsch, and Ebers (2011) and Prajogo and Ahmed (2006).

Data analysis and resultsMeasurement model

The reliability and validity of data and instruments were assessed in the measurement model (Barclay, Higgins, & Thompson, 1995). Internal consistency evaluates data reliability based on two measures, namely, Cronbach's alpha and composite reliability. Meanwhile, data validity can be measured via content validity, face validity, convergent validity, and discriminant validity (Chin, 1998; Hair, Ringle, & Sarstedt, 2011).

Cronbach's alpha measures the psychometric reliability of data, the inter-item correlation of each construct, and the average correlation of the actual items. Cronbach's alpha has a minimum threshold of 0.60 (Hair et al., 2011). As shown in Table 2, all Cronbach's alpha values in this study exceed this threshold, thereby suggesting that the average and actual correlations between the items are exact and that the data are reliable and can be used for further analysis.

Table 2.

Convergent validity.

Constructs  Items-loading  Cronbach's Alpha  Composite Reliability  Average Variance Extracted (AVE)  VIF 
Big Data Analytics Capability
BDAC1  0.708  0.849  0.885  0.525  2.743 
BDAC2  0.721        3.608 
BDAC3  0.741        3.558 
BDAC4  0.699        2.173 
BDAC5  0.756        2.421 
BDAC6  0.761        2.617 
BDAC7  0.682        1.454 
Data-Driven Culture
DDC1  0.854  0.920  0.927  0.720  2.199 
DDC2  0.796        3.046 
DDC3  0.91        3.132 
DDC4  0.795        3.3 
DDC5  0.88        2.943 
Digital Platform Capability
Connect to Businesses
CTB1  0.884  0.907  0.942  0.844  0.907 
CTB2  0.943        4.959 
CTB3  0.927        4.419 
Connect to Customers
CTC1  0.88  0.770  0.868  0.688  2.343 
CTC2  0.846        2.217 
CTC3  0.757        1.269 
Firms Agility
FA1  0.679  0.883  0.907  0.550  1.832 
FA2  0.776        2.486 
FA3  0.725        2.277 
FA4  0.768        2.186 
FA5  0.721        1.993 
FA6  0.769        2.173 
FA7  0.748        1.984 
FA8  0.741        1.865 
Flexibility Orientation
FO1  0.858  0.827  0.887  0.666  2.19 
FO2  0.893        2.675 
FO3  0.871        2.363 
FO4  0.612        1.256 
Innovation Performance
Process Innovation
PIN1  0.762  0.713  0.836  0.629  1.143 
PIN2  0.815        2.068 
PIN3  0.802        2.036 
Product Innovation
PRIN1  0.749  0.823  0.883  0.654  1.633 
PRIN2  0.798        1.765 
PRIN3  0.838        2.122 
PRIN4  0.845        2.150 
Knowledge Absorptive Capacity
Acquisition
AQC1  0.88  0.825  0.896  0.741  2.011 
AQC2  0.859        1.959 
AQC3  0.842        1.713 
Assimilation
ASM1  0.864  0.821  0.894  0.737  1.826 
ASM2  0.856        1.831 
ASM3  0.855        1.864 
Transformation
TRNS1  0.888  0.864  0.917  0.786  2.399 
TRNS2  0.886        2.132 
TRNS3  0.885        2.178 
Exploitation
EXP1  0.905  0.876  0.924  0.802  2.447 
EXP2  0.885        2.304 
EXP3  0.897        2.408 

Composite reliability reveals all indicators of a particular construct (Henseler, Ringle, & Sarstedt, 2015) and can be measured using PLS-SEM. This measure has a minimum threshold of 0.60 (Fornell & Larcker, 1981; Hair et al., 2011). Measures of composite reliability work better when the items are reflective. If these items are formative, then the VIF value is used instead to test the reliability of indicators (Hair et al., 2011; Kutner, Nachtsheim, Neter, & Li, 2005). Composite reliability was employed at the first stage of this study, given that the constructs have reflective items. Table 2 shows that the composite reliability of all items exceeds the 0.60 thresholds.

Convergent validity illustrates the theoretical relationship among the constructs of a model and indicates the degree of correlation between the study variables in the context of the same model. If the variables are not correlated, they do not need to be combined into a single model. Convergent validity is measured based on the average variance extracted, with a minimum acceptable value of 0.50 (Fornell & Larcker, 1981a; Hair et al., 2011). Table 2 shows that all AVE values exceed this threshold, thereby confirming that the constructs are interlinked in the context of the model.

Common method bias (CMB) or variance is related to the adopted measurement method instead of the constructs. CMB arises when the data for the dependent and independent variables are collected from the same set of respondents (Podsakoff, MacKenzie, Lee, & Podsakoff, 2003). CMB is a severe problem that can jeopardize the results of any study. Accordingly, researchers have used several methods to address CMB, including Harman's single factor test (Maxwell & Harman, 1968), Liang's method (Liang, Wang, Xue, & Ge, 2017), Bagozzi's approach (Bagozzi, Yi, & Phillips, 1991), and Kock's inner VIF method (Kock, 2015). Bagozzi's method was employed in this study to test CMB. According to this method, if the correlation among the variables is less than 0.90, the data are free from CMB and can be further analyzed.

The inner VIF proposed by Kock (2015) was also employed to test CMB by performing a full collinearity test. The inner VIF was calculated while considering each variable dependent once. As shown in Table 2, all inner VIF values are less than the 5 thresholds (Kock, 2015), proving that CMB is not a severe concern in this study.

Discriminant validity (Fornell–Larcker criterion)

One way to measure the discriminant validity is using the Fornell–Larcker criterion, which compares the square root of AVE with the inter-construct correlation. Specifically, the square root of AVE should be greater than the inter-variable correlation to confirm discriminant validity (Fornell & Larcker, 1981a). The shared variance of the model was less than the square root of AVE. Table 3 reports that the square roots of AVE are greater than the inter-construct correlations reported in the same column.

Table 3.

Fornell Larker criterion.

Fornell-Larker Criterion
Constructs  AQC  ASM  TRAN  EXP  BDAC  CTB  CTC  DDC  FA  FO  PIN  PRIN 
AQC  0.86                       
ASM  0.61  0.86                     
TRAN  0.41  0.5  0.89                   
EXP  0.59  0.75  0.41  0.9                 
BDAC  0.51  0.49  0.55  0.43  0.73               
CTB  0.31  0.33  0.41  0.35  0.48  0.92             
CTC  0.45  0.44  0.49  0.46  0.63  0.75  0.83           
DDC  −0.01  −0.03  0.01  −0.09  −0.01  −0.03  −0.04  0.85         
FA  0.51  0.53  0.59  0.55  0.74  0.49  0.67  −0.004  0.74       
FO  0.39  0.28  0.33  0.33  0.64  0.42  0.49  −0.04  0.51  0.82     
PIN  0.38  0.36  0.34  0.42  0.47  0.35  0.44  −0.07  0.5  0.39  0.79   
PRIN  0.46  0.49  0.57  0.46  0.67  0.45  0.58  0.02  0.62  0.5  0.43  0.81 
Heterotrait-Monotrait (HTMT) ratio

In a contemporary research context, a higher factor loading can contaminate the results of the Fornell–Larcker criterion and subsequently affect the discriminant validity of the constructs. The HTMT ratio can be used as an alternate measure of discriminant validity (Henseler et al., 2015). HTMT ratio is a breakthrough in the context of PLS-SEM. Results of Monte Carlo simulations even show that the HTMT ratio outperforms the other measures of discriminant validity in terms of accuracy. Table 4 reports that all HTMT ratios are below the minimum threshold of 0.90 (Henseler et al., 2015), confirming discriminant validity.

Table 4.

HTMT ratio.

HTMT Ratio
Constructs  AQC  ASM  TRAN  EXP  BDAC  CTB  CTC  DDC  FA  FO  PIN  PRIN 
AQC                         
ASM  0.74                       
TRAN  0.48  0.60                     
EXP  0.70  0.88  0.47                   
BDAC  0.61  0.57  0.63  0.50                 
CTB  0.36  0.38  0.46  0.39  0.55               
CTC  0.55  0.55  0.60  0.55  0.77  0.90             
DDC  0.05  0.05  0.05  0.08  0.04  0.05  0.06           
FA  0.60  0.62  0.67  0.61  0.84  0.55  0.80  0.05         
FO  0.47  0.35  0.39  0.40  0.77  0.48  0.60  0.04  0.59       
PIN  0.49  0.45  0.40  0.50  0.58  0.42  0.58  0.08  0.60  0.52     
PRIN  0.56  0.60  0.68  0.54  0.78  0.52  0.72  0.05  0.72  0.61  0.54   
Assessment of the structural equation modelCoefficient of determination (R2)

R2 assesses the variance in the independent variable due to the independent variables. R2 has no minimum threshold; depending on their study context and discipline, researchers should decide whether their obtained R2 can explain enough variance (Henseler, Ringle, & Sinkovics, 2009; Hulland, 1999). R2 measures the overall predictive efficiency of the model that illustrates the combined variance of all independent variables. BDAC obtained an R2 value of 0.578, suggesting that KAC explains 57.8% of BDAC variance.

Similarly, KAC explains 29.7% of the variance in DPC, KAC, DPC, and BDAC collectively explain 64.5% of the variance in FA, and FA, DPC, and BDAC collectively explain 56% of the variance in IP.

Determining effect size (f2)

The effect size measures the influence of individual variables by omitting the independent variable from the model and subsequently observing the change in this variable. PLS-SEM uses the parameter f2 to capture the effect of individual variables on the dependent variables. In previous studies, f2 values of 0.02, 0.13, and 0.26 are categorized as a low, medium, and high, respectively (Cohen, 1988). According to the standard, all the values are small, medium, and high, except one with no DPC effect on IP.

Predictive relevance (Q2)

To analyze the predictive relevance of the model, Q2 is calculated in Smart-PLS via a blindfold procedure. In previous studies, Q2 values of 0.02, 0.13, and 0.26 are categorized as low, medium, and high. All variables in this study have a sufficiently high Q2, thereby indicating the high predictive relevance of the model.

Direct path analysis

Bootstrapping uses a replacement procedure to enhance the sample size. Each observation was selected from the population each time and replaced with other elements; in this way, all elements have an equal chance of being chosen as samples. An observation may be selected more than once or may not be included in the sample. The minimum sample size for bootstrapping should equal the actual sample size (Wetzels, Odekerken-Schröder, & Van Oppen, 2009). However, a subsample of 5000 observations has been recommended in the literature (Hair, Risher, Sarstedt, & Ringle, 2019). Following this suggestion, this study applied bootstrapping with 5000 subsamples to obtain more accurate estimates. Bootstrapping returns all the relationships specified in the model and their significance and strength. Table 5 presents the path coefficients of the direct, indirect, and moderating effects as specified in the model.

Table 5.

Path coefficients and significance.

Path Coefficients and Significance
Hypothesis  Coefficient  Standard Deviation  T Statistics  P-Values 
Direct Relationships         
H1: KAC -> BDAC  0.360  0.069  5.226  0.000⁎⁎⁎ 
H2: KAC -> DPC  0.545  0.085  6.389  0.000⁎⁎⁎ 
H3: KAC -> FA  0.298  0.078  3.808  0.000⁎⁎⁎ 
H4: BDAC -> FA  0.422  0.081  5.213  0.000⁎⁎⁎ 
H5: DPC -> FA  0.213  0.058  3.681  0.000⁎⁎⁎ 
H6: FA -> IP  0.264  0.085  3.115  0.002⁎⁎⁎ 
H7: BDAC -> IP  0.367  0.078  4.699  0.000⁎⁎⁎ 
H8: DPC -> IP  0.193  0.085  2.273  0.023⁎⁎ 
Mediating Relationships         
H9: KAC -> BDAC -> FA  0.152  0.034  4.511  0.000⁎⁎⁎ 
H10: KAC -> DPC -> FA  0.116  0.037  3.119  0.002⁎⁎⁎ 
Moderating Effects         
H11: KAC*FO -> BDAC  −0.069  0.042  1.651  0.099* 
H12: BDAC*DDC -> IP  0.090  0.078  1.147  0.251 

Note: ***, **, * represent the significance level at 1%, 5% and 10% respectively.

The direct relationships proposed in H1 to H8 were all supported by the results in Table 5. H1 proposed a direct and positive effect of KAC on BDAC (β=0.360, T-value= 5.226 p<0.001), H2 proposed a positive and direct impact of KAC on DPC (β=0.545, T-value= 6.389 p<0.001), H3 proposed a positive effect of KAC on FA (β=0.298, T-value= 3.808 p<0.001), H4 proposed a positive effect of BDAC on FA (β=0.422, T-value= 5.213 p<0.001), H5 proposed a positive effect of DPC on FA (β=0.213, T-value= 3.681 p<0.001), H6 proposed a positive effect of FA on IP (β=0.264, T-value= 3.115 p<0.001), H7 proposed a positive impact of BDAC on IP (β=0.367, T-value= 4.699 p<0.001), and H8 proposed a positive impact of DPC (β=0.193, T-value= 2.273 p<0.05).

Mediation and moderation analysis

Using PLS-SEM to test mediation has been debated by researchers for several decades. The mediation analysis procedure proposed by Baron and Kenny (1986) has been widely adopted in recent studies. However, contemporary research on methodologies (e.g., Hayes & Scharkow, 2013) reported some theoretical and methodological deficiencies in this procedure.

Results of this procedure pointed toward both direct and indirect effects. The direct effects were significant and positive, whereas the indirect or mediating effects were significant and pointed in the same direction as the direct effects. Therefore, a partial mediation was observed between the KAC and FA. These results support H9, which proposed that BDAC mediates the relationship between KAC and FA (β=0.152, T-value= 4.511 p<0.001), and H10, which proposed that DPC mediates the relationship between KAC and FA (β=0.116, T-value= 3.119 p<0.001).

Two moderating effects were also tested. First, the moderating effect of FO on the direct relationship between KAC and BDAC was significant, thereby supporting H11 (β=−0.069, T-value= 1.651, p<0.10. The interaction graph in Fig. 2 shows that negative values of FO weaken the relationship between KAC and BDAC, whereas its positive values strengthen such a relationship. Therefore, flexible orientation increases the positive effect of KAC on BDAC and vice versa. Second, control orientation weakened the positive effect of KAC on BDAC. Specifically, control orientation was insignificant with a negative coefficient, suggesting that a weak data-driven culture weakens the relationship between BDAC and IP, thereby rejecting H12 (β=−0.090, T-value= 1.147 p>0.10). Data-driven culture also produced an insignificant moderating effect.

Fig. 3 shows the moderating effect of DDC on the relationship between BDAC and IP.

Fig. 4 presents the path coefficients along with their values.

Overall model fit

The outer model calculates the reliability and validity, whereas the inner model evaluates the predictive efficiency. The standardized root means square residual (SRMR) has a minimum acceptable value of 0.08 (Henseler et al., 2015). The other value, normed fit index (NFI), is associated with the chi-square index and preferably has higher values. An NFI value of near 1 is considered acceptable. In this study, the SRMR and NFI values were calculated to assess the model fit. Under the saturated model, the obtained SRMR value was 0.07, below the 0.08 threshold.

Meanwhile, the NFI value was 0.70, near 1, suggesting a good model fit. The goodness-of-fit (GOF) index considers the performance of both the measurement and structural models. This index also provides operational solutions to the problems faced by previously developed models in measuring the GOF of PLS path models. Accordingly, the GOF index has been widely employed (Chin, 2010). Studies using PLS-SEM also adopt this index for global validation of models (e.g., Duarte & Raposo, 2010; Rigdon, Ringle, & Sarstedt, 2010). In this study, the GOF index was calculated as follows;

Where AVE represents the average commonalities, the GOF index may range from 0 to 1, where 0.10 is small enough to validate a model, 0.25 is considered moderate, and 0.36 is significant enough to approve the global validation of the model and indicates that this model is both parsimonious and reasonable (Henseler et al., 2015). As shown in Table 6, the computed GOF index is 0.586, confirming the research model's global fitness.

Table 6.

The goodness of Fit Index.

The goodness of Fit Index
Constructs  AVE  R2  GOF 
BDAC  0.526  0.578   
DPC  0.872  0.297   
FA  0.550  0.645   
IP  0.711  0.560  0.586 
FO  0.666     
KAC  0.661     
DDC  0.631     
Average  0.660  0.520   
Discussion

The above results support the direct relationships proposed in H1 to H10. Each variable in the conceptual model was individually investigated, and the computed empirical values exceeded the threshold. These results prove that KAC can help firms equip themselves with dynamic capabilities to meet their requirements and satisfy their external environment's needs.

Dynamic capabilities (BDAC and DPC) are vital in bolstering a firm's performance and agility. Studies have also demonstrated the critical role of BDAC as a mediator of the relationship between organizational capabilities and performance (Hsinchun et al., 2018; Wang, Yeoh, Richards, Wong, & Chang, 2019). The statistical results of this work also underscore the positive and significant roles of BDAC and DPC as mediators of the relationship between KAC and FA.

Similarly, both variables' moderating roles are part of cultural traits and flexibility orientations (flexible and control orientations). This study proposed that flexibility orientations will moderate the relationship between KAC and BDAC. The flexible orientations of firms encourage change. FO and CO produce different outcomes related to the acceptance of change in a firm. The concept of flexibility orientations was adapted from Dubey et al. (2019), where both flexible and control orientations were checked individually. Unlike H1 to H11, H12 was not empirically supported for two reasons. First, most manufacturing firms in Pakistan are privately owned. Second, even government-owned manufacturing firms follow a traditional hierarchical management system where the top management makes all the decisions and thereby controls the orientations of these firms. This research followed the flexibility control orientations philosophy of Dubey, Gunasekaran, Childe, Blome, and Papadopoulos (2019), who proposed that control orientations will negatively impact the outcomes. In line with this philosophy, the statistical results proved that CO negatively moderates the relationship between KAC and BDAC. Empirical evidence also suggested that CO negatively moderates the relationship between the KAC of firms and the formation of BDAC. Previous studies suggest that firms from a data-driven culture highly focus on their decision-making and that DDC helps these firms decide based on data than on instincts (Gupta & George, 2016).

Conclusion

This research proposed that the manufacturing firms in Pakistan can enhance their innovation performance by introducing several dynamic capabilities. Before deciding which dynamic capabilities are critical, this research stresses KAC as a fundamental capability of firms (Spithoven, Clarysse, & Knockaert, 2010) that allows them to integrate dynamic capability. KAC was adapted from absorptive capacity theory as an independent variable. Other studies also proposed that KAC can help manufacturing firms formulate their BDAC (Mikalef et al., 2018) and DPC, which can be extensions of DCV. Both of these dynamic capabilities transform KAC to enhance the collective agility of manufacturing firms. In this case, agility is the outcome of the dynamic capability of firms (Teece, Peteratd, & Leih, 2016). This investigation also proposed that a firm's agility needs a theory to describe the phenomenon's comprehensiveness.

DPs may also need a different theory to encompass the multifunctional and complex nature of various DPs. DPC and BDAC mediate the relationship between KAC and agility, and collective agility enhances the innovation performance of manufacturing firms. Positive individual relationships were reported between the independent variable (KAC) and mediators (BDAC and DPC). As a trait of organizational culture, CO was reported to moderate the relationship between KAC and BDAC negatively. In this case, DDC cannot transform BDAC to enhance the innovation performance of manufacturing firms. DDC was a significant moderating variable that negatively moderates the relationship between BDAC and IP.

Theoretical contribution

First, this research broadens the scope of two well-known theories, DCV and absorptive capacity theory, by integrating them into a single framework and highlighting their importance. Second, this research highlights KAC as an enabler for firms to form or utilize BDAC and DPC, thereby enriching the literature on absorptive capacity and dynamic capabilities. Previous studies have mainly explored KAC as a dynamic capability of firms instead of a basis that helps firms equip themselves and organize their dynamic capabilities. Third, this study contributes to the literature on BDAC and DPC by combining these capabilities into a single dynamic capability that boosts the agility of manufacturing firms. Fourth, the outcomes of this research explain the diversified role of dynamic capabilities as a mediator of the relationship between the knowledge absorption and agility of a firm. Fifth, as one of its most significant contributions to the literature, this study examines the role of FA as an outcome of dynamic capabilities, uncovers the heterogenic role of agility, and explains that agility cannot always be treated as a dynamic capability of a firm. Another key finding of this work is that, in many cases, the agility of a firm may be an outcome of its immutable resources and capabilities. This research primarily contributes to the literature on organizational culture. In any firm-level research, the role of organizational culture should be considered, given its potential to disrupt the relationships among desirable outcomes.

Managerial contribution

This research benefits the stakeholders of manufacturing firms, who should focus on seeking alternative media for gathering and transforming knowledge (KAC), which can help them utilize their dynamic capabilities (BDAC and DPCs) at their maximum potential. Moreover, full utilization of BDA and DP can help manufacturing firms enhance their agility and performance. Managers of manufacturing firms should consider the importance of KAC and arrange specific dynamic capabilities, such as BDAC and DPC, to enhance their agility. Following the outcomes of this research, managers of manufacturing firms should adapt and transform a flexible organizational culture that may help change the outcomes of their dynamic capabilities as well as improve their agility and innovation performance, given that control orientations and a less-developed data-driven culture can stop firms from absorbing knowledge and nurturing their dynamic capabilities.

Limitations

Due to the COVID-19 pandemic, the data were only collected using online media, which may introduce ambiguities in the collected survey responses. Future studies may use secondary data to produce diversified outcomes, such as proxies for innovation and data analytics. Performance comparisons across neighboring developing countries may also be conducted using the same variables, (Fig. 1).

Fig. 1.

Research model.

(0.27MB).
Fig. 2.

Moderating effect of FO.

(0.07MB).
Fig. 3.

Moderating effect of DDC.

(0.07MB).
Fig. 4.

Path coefficient.

(0.54MB).
References
[Ali et al., 2016]
M. Ali, K.A. Seny Kan, M. Sarstedt.
Direct and configurational paths of absorptive capacity and organizational innovation to successful organizational performance.
Journal of Business Research, 69 (2016), pp. 5317-5323
[Ashrafi et al., 2019]
A. Ashrafi, A. Zare Ravasan, P. Trkman, S. Afshari.
The role of business analytics capabilities in bolstering firms' agility and performance.
International Journal of Information Management, 47 (2019), pp. 1-15
[Bagozzi et al., 1991]
R.P. Bagozzi, Y. Yi, L.W. Phillips.
Assessing construct validity in organizational research.
Administrative Science Quarterly, 36 (1991), pp. 421-458
[Barclay et al., 1995]
D. Barclay, C. Higgins, R. Thompson.
The Partial Least Squares (pls) approach to casual modeling: Personal computer adoption ans use as an illustration.
Technology Studies, 2 (1995), pp. 285-309
[Barney, 1991]
J. Barney.
Firm resources and sustained competitive advantage.
Journal of Management, (1991),
[Baron and Kenny, 1986]
R.M. Baron, D.A. Kenny.
The moderator–mediator variable distinction in social psychological research: Conceptual, strategic, and statistical considerations.
Journal of Personality and Social Psychology, 51 (1986), pp. 1173-1182
[Barton and Court, 2012]
D. Barton, D. Court.
Making advanced analytics work for you.
Harvard Business Review, 90 (2012), pp. 6
[Bharadwaj, 2000]
A.S. Bharadwaj.
A resource-based perspective on information technology capability and firm performance: An empirical investigation.
MIS Quarterly, 24 (2000), pp. 169
[Caputo et al., 2016]
A. Caputo, G. Marzi, M. Pellegrini.
The Internet of Things in manufacturing innovation processes: Development and application of a conceptual framework.
Business Process Management Journal, 22 (2016), pp. 383-402
[Cenamor et al., 2017]
J. Cenamor, D. Rönnberg Sjödin, V. Parida.
Adopting a platform approach in servitization: Leveraging the value of digitalization.
International Journal of Production Economics, (2017),
[Cenamor et al., 2019]
Javier Cenamor, V. Parida, J. Wincent.
How entrepreneurial SMEs compete through digital platforms: The roles of digital platform capability, network capability and ambidexterity.
Journal of Business Research, 100 (2019), pp. 196-206
[Chen et al., 2015]
D.Q. Chen, D.S. Preston, M. Swink.
How the use of big data analytics affects value creation in supply chain management.
Journal of Management Information Systems, 32 (2015), pp. 4-39
[Chen and Storey, 2012]
H. Chen, V.C. Storey.
Business intelligence and impact: From big data to big impact.
MIS Quarterly, 36 (2012), pp. 1165-1188
[Chi et al., 2010]
L. Chi, T. Ravichandran, G. Andrevski.
Information technology, network structure, and competitive action.
Information Systems Research, 21 (2010), pp. 543-570
[Chin, 1998]
W.W. Chin.
The partial least squares approach for structural equation modeling.
Modern methods for business research, (1998), pp. 295-336
[Chin, 2010]
W.W. Chin.
How to Write Up and Report PLS Analyses.
Handbook of partial least squares, Springer, (2010), pp. 655-690 http://dx.doi.org/10.1007/978-3-540-32827-8_29
[Constantiou and Kallinikos, 2015]
I.D. Constantiou, J. Kallinikos.
New games, new rules: Big data and the changing context of strategy.
Journal of Information Technology, 30 (2015), pp. 44-57
[Côrte-Real et al., 2017]
N. Côrte-Real, T. Oliveira, P. Ruivo.
Assessing business value of Big Data Analytics in European firms.
Journal of Business Research, 70 (2017), pp. 379-390
[Côrte-Real et al., 2019]
N. Côrte-Real, P. Ruivo, T. Oliveira, A. Popovič.
Unlocking the drivers of big data analytics value in firms.
Journal of Business Research, 97 (2019), pp. 160-173
[Delmas et al., 2011]
M. Delmas, V.H. Hoffmann, M. Kuss.
Under the tip of the iceberg: Absorptive capacity, environmental strategy, and competitive advantage.
Business & Society, 50 (2011), pp. 116-154
[Deshpande et al., 1993]
R. Deshpande, J.U. Farley, F.E. Webster.
Corporate culture, customer orientation, and innovativeness in Japanese firms: A quadrad analysis.
Journal of Marketing, 57 (1993), pp. 23
[Dove and Palmer, 2004]
R. Dove, L.M. Palmer.
Response ability: The language, structure, and culture of the agile organization.
[Duarte and Raposo, 2010]
P.A.O. Duarte, M.L.B. Raposo.
A PLS model to study brand preference: An application to the mobile phone market.
Handbook of Partial Least Squares, (2010),
[Dubey et al., 2019a]
R. Dubey, A. Gunasekaran, S.J. Childe.
Big data analytics capability in supply chain agility.
Management Decision, 57 (2019), pp. 2092-2112
[Dubey et al., 2019b]
R. Dubey, A. Gunasekaran, S.J. Childe, C. Blome, T. Papadopoulos.
Big data and predictive analytics and manufacturing performance: Integrating institutional theory, resource-based view and big data culture.
British Journal of Management, 30 (2019), pp. 341-361
[Dubey et al., 2019c]
R. Dubey, A. Gunasekaran, S.J. Childe, T. Papadopoulos, Z. Luo, S.F. Wamba, et al.
Can big data and predictive analytics improve social and environmental sustainability?.
Technological Forecasting and Social Change, 144 (2019), pp. 534-545
[Dubey et al., 2019d]
R. Dubey, A. Gunasekaran, S.J. Childe, D. Roubaud, S. Fosso Wamba, M. Giannakis, et al.
Big data analytics and organizational culture as complements to swift trust and collaborative performance in the humanitarian supply chain.
International Journal of Production Economics, 210 (2019), pp. 120-136
[FLATTEN et al., 2011]
T.C. Flatten, G.I. Greve, M. Brettel.
Absorptive capacity and firm performance in SMEs: The mediating influence of strategic alliances.
European Management Review, 8 (2011), pp. 137-152
[Flor et al., 2018]
M.L. Flor, S.Y. Cooper, M.J. Oltra.
External knowledge search, absorptive capacity and radical innovation in high-technology firms.
European Management Journal, 36 (2018), pp. 183-194
[Fornell and Larcker, 1981a]
C. Fornell, D.F. Larcker.
Structural equation models with unobservable variables and measurement error: Algebra and statistics.
Journal of Marketing Research, 18 (1981), pp. 382-388
[Fornell and Larcker, 1981b]
C. Fornell, D.F. Larcker.
Evaluating structural equation models with unobservable variables and measurement error.
Journal of Marketing Research, 18 (1981), pp. 39
[George et al., 2014]
G. George, M.R. Haas, A. Pentland.
Big data and management.
Academy of Management Journal, 57 (2014), pp. 321-326
[Gupta and George, 2016]
M. Gupta, J.F. George.
Toward the development of a big data analytics capability.
Information & Management, 53 (2016), pp. 1049-1064
[Hair et al., 2011]
Joe F. Hair, C.M. Ringle, M. Sarstedt.
PLS-SEM: Indeed a silver bullet.
Journal of Marketing Theory and Practice, 19 (2011), pp. 139-152
[Hair et al., 2019]
Joseph F. Hair, J.J. Risher, M. Sarstedt, C.M. Ringle.
When to use and how to report the results of PLS-SEM.
European Business Review, 31 (2019), pp. 2-24
[Hayes and Scharkow, 2013]
A.F. Hayes, M. Scharkow.
The relative trustworthiness of inferential tests of the indirect effect in statistical mediation analysis.
Psychological Science, 24 (2013), pp. 1918-1927
[Heckler et al., 2016]
J. Heckler, S. Illinois, A. Powell.
IT and organizational agility : A review of major findings IT and organizational agility : A review of major findings.
MWAIS 2016 Proceedings, pp. 1-5
[Henseler et al., 2015]
J. Henseler, C.M. Ringle, M. Sarstedt.
A new criterion for assessing discriminant validity in variance-based structural equation modeling.
Journal of the Academy of Marketing Science, 43 (2015), pp. 115-135
[Henseler et al., 2009]
J. Henseler, C.M. Ringle, R.R. Sinkovics.
The use of partial least squares path modeling in international marketing.
Advances in international marketing, (2009), pp. 277-319 http://dx.doi.org/10.1108/S1474-7979(2009)0000020014
[Hulland, 1999]
J. Hulland.
Use of partial least squares (PLS) in strategic management research: A review of four recent studies.
Strategic Management Journal, 20 (1999), pp. 195-204
[Idris et al., 2015]
S.A.M. Idris, R.A. Wahab, A. Jaapar.
Corporate Cultures Integration and Organizational Performance: A Conceptual Model on the Performance of Acquiring Companies.
Procedia - Social and Behavioral Sciences, (2015),
[Jansen et al., 2005]
J.J.P. Jansen, F.A.J. Van Den Bosch, H.W. Volberda.
Managing Potential and Realized Absorptive Capacity: How do Organizational Antecedents Matter?.
Academy of Management Journal, 48 (2005), pp. 999-1015
[Janssen et al., 2017]
M. Janssen, H. van der Voort, A. Wahyudi.
Factors influencing big data decision-making quality.
Journal of Business Research, 70 (2017), pp. 338-345
[Jeble et al., 2018]
S. Jeble, R. Dubey, S.J. Childe, T. Papadopoulos, D. Roubaud, A. Prakash.
Impact of big data and predictive analytics capability on supply chain sustainability.
The International Journal of Logistics Management, 29 (2018), pp. 513-538
[Kayworth et al., 2001]
T.R. Kayworth, D. Chatterjee, V. Sambamurthy.
Theoretical Justification for IT Infrastructure Investments.
Information Resources Management Journal, 14 (2001), pp. 5-14
[Kenny, 2011]
G. Kenny.
Diversification: Best practices of the leading companies.
Journal of Business Strategy, 33 (2011), pp. 12-20
[Kiron et al., 2014]
D. Kiron, P. Prentice, R.B. Ferguson.
The analytics mandate.
MIT Sloan Management Review, 55 (2014), pp. 1-25
[Kock, 2015]
N. Kock.
Common method bias in PLS-SEM: A full collinearity assessment approach.
International Journal of E-Collaboration (Ijec), 11 (2015), pp. 1-10
[Kutner et al., 2005]
M.H. Kutner, C. Nachtsheim, J. Neter, W. Li.
Applied linear statistical models.
McGraw-Hill Irwin, (2005),
[Lane et al., 2006]
P.J. Lane, B. Koka, S. Pathak.
The reification of absorptive capacity: A critical review and reconceptualization.
Academy of Management Review, 31 (2006), pp. 833-863
[Lehrer et al., 2018]
C. Lehrer, A. Wieneke, J. vom Brocke, R. Jung, S. Seidel.
How big data analytics enables service innovation: materiality, affordance, and the individualization of service.
Journal of Management Information Systems, (2018),
[Liang et al., 2017]
H. Liang, N. Wang, Y. Xue, S. Ge.
Unraveling the Alignment Paradox: How Does Business—IT Alignment Shape Organizational Agility?.
Information Systems Research, 28 (2017), pp. 863-879
[Liao et al., 2003]
J. Liao, H. Welsch, M. Stoica.
Organizational absorptive capacity and responsiveness: An empirical investigation of growth-oriented SMEs.
Entrepreneurship Theory and Practice, (2003),
[Maurer et al., 2011]
I. Maurer, V. Bartsch, M. Ebers.
The value of intra-organizational social capital: How it fosters knowledge transfer, innovation performance, and growth.
Organization Studies, 32 (2011), pp. 157-185
[Maxwell and Harman, 1968]
A.E. Maxwell, H.H. Harman.
Modern Factor Analysis.
Journal of the Royal Statistical Society. Series A (General), 131 (1968), pp. 615
[Ng and Wakenshaw, 2017]
I.C.L. Ng, S.Y.L. Wakenshaw.
The Internet-of-Things: Review and research directions.
International Journal of Research in Marketing, 34 (2017), pp. 3-21
[Overby et al., 2006]
E. Overby, A. Bharadwaj, V. Sambamurthy.
Enterprise agility and the enabling role of information technology.
European Journal of Information Systems, (2006),
[Parida and Örtqvist, 2015]
V. Parida, D. Örtqvist.
Interactive effects of network capability, ICT capability, and financial slack on technology-based small firm innovation performance.
Journal of Small Business Management, (2015),
[Parker et al., 2016a]
G.G. Parker, M.W. Van Alstyne, S.P. Choudary.
Platform revolution: How networked markets are transforming the economy - and How to make them work for you.
W. W. Norton & Company, (2016),
[Parker et al., 2016b]
Parker, G. G., .Van Alstyne, M. W., .& Choudary, S. P. (.2016b). Today: Welcome to the platform revolution. Platform revolution: How networked markets are transforming the economy - and how to make them work for you.
[Pavlou and Sawy, 2010]
P.A. Pavlou, O.A.E. Sawy.
The “third hand": IT-enabled competitive advantage in turbulence through improvisational capabilities.
Information Systems Research, (2010),
[Pisano, 2017]
G.P. Pisano.
Toward a prescriptive theory of dynamic capabilities: Connecting strategic choice, learning, and competition.
Industrial and Corporate Change, (2017),
[Podsakoff et al., 2003]
P.M. Podsakoff, S.B. MacKenzie, J.-.Y. Lee, N.P. Podsakoff.
Common method biases in behavioral research: A critical review of the literature and recommended remedies.
Journal of Applied Psychology, 88 (2003), pp. 879
[Prajogo and Ahmed, 2006]
D.I. Prajogo, P.K. Ahmed.
Relationships between innovation stimulus, innovation capacity, and innovation performance.
R and D Management, 36 (2006), pp. 499-515
[Premkumar et al., 2005]
G. Premkumar, K. Ramamurthy, C.S. Saunders.
Information processing view of organizations: An exploratory examination of fit in the context of interorganizational relationships.
Journal of Management Information Systems, (2005),
[Ramakrishnan et al., 2012]
T. Ramakrishnan, M.C. Jones, A. Sidorova.
Factors influencing business intelligence (BI) data collection strategies: An empirical investigation.
Decision Support Systems, 52 (2012), pp. 486-496
[Rigdon et al., 2010]
E.E. Rigdon, C.M. Ringle, M. Sarstedt.
Structural modeling of heterogeneous data with partial least squares.
Review of Marketing Research, (2010),
[Ritala et al., 2015]
P. Ritala, H. Olander, S. Michailova, K. Husted.
Knowledge sharing, knowledge leaking and relative innovation performance: An empirical study.
[Rivera and Shanks, 2015]
D. Rivera, G. Shanks.
A dashboard to support management of business analytics capabilities.
Journal of Decision Systems, 24 (2015),
[Roberts and Grover, 2012]
N. Roberts, V. Grover.
Investigating firm's customer agility and firm performance: The importance of aligning sense and respond capabilities.
Journal of Business Research, (2012),
[Sambamurthy et al., 2003]
V. Sambamurthy, A. Bharadwaj, V. Grover.
Shaping agility through digital options: Reconceptualizing the role of information technology in contemporary firms.
MIS Quarterly, 27 (2003), pp. 237-263
[Seo et al., 2008]
D. Seo, La Paz, I. A.
Exploring the dark side of IS in achieving organizational agility.
Communications of the ACM, 51 (2008), pp. 136-139
[Shahzad et al., 2020]
M. Shahzad, Y. Qu, S. Ur Rehman, A.U. Zafar, X. Ding, J. Abbas.
Impact of knowledge absorptive capacity on corporate sustainability with mediating role of CSR: Analysis from the Asian context.
Journal of Environmental Planning and Management, (2020),
[Shan et al., 2019]
S. Shan, Y. Luo, Y. Zhou, Y. Wei.
Big data analysis adaptation and enterprises' competitive advantages: The perspective of dynamic capability and resource-based theories.
Technology Analysis and Strategic Management, 31 (2019), pp. 406-420
[Smircich, 2017]
L. Smircich.
Concepts of culture and organizational analysis.
The anthropology of organisations, Routledge, (2017), pp. 255-274 http://dx.doi.org/10.4324/9781315241371-20
[Song, 2015]
Z. Song.
Organizational learning, absorptive capacity, imitation and innovation.
Chinese Management Studies, 9 (2015), pp. 97-113
[Spithoven et al., 2010]
A. Spithoven, B. Clarysse, M. Knockaert.
Building absorptive capacity to organise inbound open innovation in traditional industries.
[Subramaniam et al., 2019]
M. Subramaniam, B. Iyer, V. Venkatraman.
Competing in digital ecosystems.
Business Horizons, 62 (2019), pp. 83-94
[Tallon and Pinsonneault, 2011]
P.P. Tallon, A. Pinsonneault.
Competing perspectives on the link between strategic information technology alignment and organizational agility: Insights from a mediation model.
MIS Quarterly: Management Information Systems, 35 (2011), pp. 463-486
[Tambe, 2014]
P. Tambe.
Big data investment, skills, and firm value.
Management Science, 60 (2014), pp. 1452-1469
[Teece et al., 2016]
D.J. Teece, M. Peteratd, S. Leih.
Dynamic capabilities and organizational agility.
California Management Review, 58 (2016), pp. 13-35
[Tempini, 2017]
N. Tempini.
Till data do us part: Understanding data-based value creation in data-intensive infrastructures.
Information and Organization, 27 (2017), pp. 191-210
[Trantopoulos et al., 2017]
K. Trantopoulos, G. Von Krogh, M.W. Wallin, M. Woerter.
External knowledge and information technology: Implications for process innovation performance.
MIS Quarterly: Management Information Systems, (2017),
[Tseng et al., 2011]
C.Y. Tseng, D.C. Pai, C.H. Hung.
Knowledge absorptive capacity and innovation performance in KIBS.
Journal of Knowledge Management, 15 (2011), pp. 971-983
[Varis and Littunen, 2010]
M. Varis, H. Littunen.
Types of innovation, sources of information and performance in entrepreneurial SMEs.
European Journal of Innovation Management, 13 (2010), pp. 128-154
[Vasudeva and Anand, 2011]
G. Vasudeva, J. Anand.
Unpacking absorptive capacity: A study of knowledge utilization from alliance portfolios.
Academy of Management Journal, (2011),
[Volberda et al., 2010]
H.W. Volberda, N.J. Foss, M.A. Lyles.
PERSPECTIVE—Absorbing the concept of absorptive capacity: How to realize its potential in the organization field.
Organization Science, 21 (2010), pp. 931-951
[Wagner et al., 2014]
H.-.T. Wagner, D. Beimborn, T. Weitzel.
How social capital among information technology and business units drives operational alignment and IT business value.
Journal of Management Information Systems, 31 (2014), pp. 241-272
[Wamba et al., 2017]
S.F. Wamba, A. Gunasekaran, S. Akter, S.J. Ren, R. fan, Dubey, S.J. Childe.
Big data analytics and firm performance: Effects of dynamic capabilities.
Journal of Business Research, 70 (2017), pp. 356-365
[Wang et al., 2012]
N. Wang, H. Liang, W. ZHONG, Y. XUE, J. XIAO.
Resource structuring or capability building? An empirical study of the business value of information technology.
Journal of Management Information Systems, 29 (2012), pp. 325-367
[Wang et al., 2019]
S. Wang, W. Yeoh, G. Richards, S.F. Wong, Y. Chang.
Harnessing business analytics value through organizational absorptive capacity.
Information and Management, (2019), pp. 56
[Weill et al., 2002]
P. Weill, M. Subramani, M. Broadbent.
Building IT infrastructure for: Strategic agility.
MIT Sloan Management Review, 44 (2002), pp. 57-65
[Wetzels et al., 2009]
M. Wetzels, G. Odekerken-Schröder, C. Van Oppen.
Using PLS path modeling for assessing hierarchical construct models: Guidelines and empirical illustration.
MIS Quarterly: Management Information Systems, (2009),
[Wheeler, 2002]
B.C. Wheeler.
NEBIC: A dynamic capabilities theory for assessing net-enablement.
Information Systems Research, 13 (2002), pp. 125-146
[Xiao et al., 2020]
X. Xiao, Q. Tian, H. Mao.
IEEE Access, (2020), pp. 18778-18796 http://dx.doi.org/10.1109/ACCESS.2020.2968734
[Yauch, 2011]
C.A. Yauch.
Measuring agility as a performance outcome.
Journal of Manufacturing Technology Management, 22 (2011), pp. 384-404
[Yeow et al., 2018]
A. Yeow, C. Soh, R. Hansen.
Aligning with new digital strategy: A dynamic capabilities approach.
The Journal of Strategic Information Systems, 27 (2018), pp. 43-58
[Yoo et al., 2010]
Y. Yoo, O. Henfridsson, K. Lyytinen.
Research commentary —The new organizing logic of digital innovation: An agenda for information systems research.
Information Systems Research, 21 (2010), pp. 724-735
[Yusuf et al., 2014]
Y.Y. Yusuf, A. Gunasekaran, A. Musa, M. Dauda, N.M. El-Berishy, S. Cang.
A relational study of supply chain agility, competitiveness and business performance in the oil and gas industry.
International Journal of Production Economics, (2014),
[Zahra and George, 2002]
S.A. Zahra, G. George.
Absorptive capacity: A review, reconceptualization, and extension.
Academy of Management Review, 27 (2002), pp. 185-203
[Zeng and Glaister, 2018]
J. Zeng, K.W. Glaister.
Value creation from big data: Looking inside the black box.
Strategic Organization, 16 (2018), pp. 105-140
[Zhang and Dhaliwal, 2009]
C. Zhang, J. Dhaliwal.
An investigation of resource-based and institutional theoretic factors in technology adoption for operations and supply chain management.
International Journal of Production Economics, (2009),
Copyright © 2022. The Authors
Article options
Tools