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Vol. 7. Issue 3.
(July - September 2022)
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Vol. 7. Issue 3.
(July - September 2022)
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Mapping the conceptual structure of intellectual capital research: A co-word analysis
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Omid Farajia, Kaveh Asiaeib,
Corresponding author
Kaveh.Asiaei@monash.edu

Corresponding author.
, Zabihollah Rezaeec, Nick Bontisd, Ehsan Dolatzareie
a Faculty of Management and Accounting, College of Farabi, University of Tehran, Qom, Iran
b Department of Accounting, School of Business, Monash University Malaysia, Bandar Sunway, Malaysia
c Fogelman College of Business and Economics, University of Memphis, United States
d DeGroote School of Business, McMaster University, Hamilton, Canada
e Faculty of Management, University of Tehran, Tehran, Iran
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Abstract

This bibliometric study aims to map the conceptual structure of intellectual capital (IC) research between 1975 and 2020 using co-word analysis and social network analysis drawing upon the Web of Science database. The results show that 12,310 documents have been published from 1975 to 2020. From a total of 6,516 keywords used in documents, the five most frequent keywords have been identified as: “performance”, “innovation”, “knowledge”, “impact”, and “management”. The United States is the top-producing country with 3,303 documents. In addition, the findings indicate that the Journal of Intellectual Capital is the most prolific journal with 208 articles, and the Academy of Management Journal is the most frequently cited journal with 11,914 citations. The National Bureau of Economic Research (NBER) is the world's most prolific research institute with 84 documents. The most frequently used keywords in different geographical regions show that except for South America, where the most frequently used keyword is "innovation", "performance" is the most common keyword in Asia, Europe, North America, Oceania, and Africa. This study provides a comprehensive picture of the current state of IC research, thereby paving the way for future studies by shedding light on the gaps in the literature and presenting suggestions for future research.

Keywords:
Intellectual capital
Co-word analysis
Social network analysis
Scientific map
Web of Science database
Full Text
Introduction

Intellectual capital (IC) has become a vibrant topic in management research in general and accounting and strategic management in particular (Martin-de-Castro et al., 2019; Serenko & Bontis, 2022). The rationale behind labeling it as “capital” can be traced back to its economic roots since it was described in 1969 by the economist Galbraith simultaneously as a process of value creation and a bundle of assets. Nonetheless, the term "capital" has been the subject of intense debate within the academic field as a highly controversial concept (Dean & Kretschmer, 2007; Martín-de-Castro et al., 2011). Stewart (1991) described IC as the "brainpower" of an organization. Afterward, Stewart & Losee (1994) underscored the importance of IC in the 21st century and beyond by defining IC as follows:

“the sum of everything everybody in a company knows that gives it a competitive edge […] Intellectual Capital is intellectual material, knowledge, experience, intellectual property, information […] that can be put to use to create wealth.” (Stewart, 1997, p.x)

Intellectual capital is indisputably an interdisciplinary topic given the fact that it is not purely concerned with accounting for intangibles on a balance sheet (Bontis, 1998, Dumay & Guthrie, 2019). Instead, it carries broader implications for accounting that embrace management, law, corporate governance, business sustainability, human resources and the political economy (Garanina et al., 2021). IC research, which is constantly changing, has evolved over five different stages, and yet not always consecutively applied (Dumay et al., 2020). The first stage raised awareness, whereas the second stage shaped theories and frameworks (Petty & Guthrie, 2000). The third stage was concerned with examinations of IC in practice from a performative and critical standpoint (Guthrie et al., 2012). The fourth stage was related to an ecosystem perspective, as initially highlighted by Dumay & Garanina (2013). In the fifth stage of IC research, the boundaries were removed, and the questions asked ranged from: "What is IC worth to investors, customers, society, and the environment?" to "Is managing IC a worthwhile endeavor?" (Dumay et al., 2020). The aforementioned phases are the cornerstone of the IC research pathway. They are essential for understanding how IC has emerged from a curious idea into a far-reaching and changing contemporary field of research and practice (Dumay & Guthrie, 2019).

This study aims to map the conceptual structure of IC research between 1975 and 2020 using co-word analysis and social network analysis. Its purpose is to identify the main topics that make up the IC research structure; the dominant, saturated, fading, and emerging topics in the IC setting. Further, it highlights the most frequently cited articles published by permanent authors in high-quality journals at top universities in different countries, and presents the future direction of IC research. In order to achieve the objectives of the research, this study uses data from 12,310 documents published on the Web of Science (WOS) database.

This study contributes to the IC literature in several ways. First, bibliometric research has focused primarily on publishing patterns based on authorship (Andrikopoulos & Kostaris, 2017; Chan et al., 2009; Faraji et al., 2020; Kılıç et al., 2019) journals (Bamel et al., 2022; Bellucci et al., 2021; Carmona et al., 1999; Chung et al., 1992; Gaviria-Marin et al., 2018), universities (Heck & Bremser, 1986), countries (Brown & Gardner, 1985) and different geographical regions (Shiffrin & Börner, 2004). Although these studies provide valuable insights, they fail to map the conceptual structure of the discipline (Ding et al., 2001). Therefore, the present study seeks to fill this gap in the literature and enhance the understanding of the conceptual structure of IC research through co-word analysis and social network analysis. Second, this study informs quantitative evaluations of IC research by adopting a qualitative approach to evaluate the literature in this field. Third, previous studies on IC have mainly focused on the Scopus database (Mohammad et al., 2021; Quintero-Quintero et al., 2021). The present research focuses on WOS as a more comprehensive database, and the results could reveal previously unknown evidence. Fourth, this study outlines the conceptual structure of IC research based on different geographical regions, which can be useful in identifying regional trends. Fifth, this study will provide a comprehensive picture of the current state of IC research. In addition, it will pave the way for future studies by identifying research gaps. Therefore, the results of this study can help IC researchers better understand emerging trends in this field and conduct their future research approaches accordingly. Moreover, the results may get other researchers interested in studying IC.

Although considerable academic literature has been conducted around the theme of IC in the last few decades, research on IC is still scattered and inconclusive. It is necessary to shed light on the IC dominant factors and the paradigmatic evolution of this important research topic over time. This, therefore, motivates the current study to examine the conceptual structure of IC research as an interdisciplinary field that has absorbed various theories and knowledge from other disciplines. This study is an effort to extend this area by generating fresh insights into the current state of IC paradigms and future research horizons. To this end, this paper aims to answer the following questions:

  • RQ1: What are the main topics that make up the IC research structure?

  • RQ2: What are the dominant, saturated, fading, and emerging issues in the field of IC?

  • RQ3: Have there been any changes in IC topics between 1975 and 2020?

  • RQ4: Are there any differences in the patterns and trends of IC research across geographical regions?

  • RQ5: What are the most frequently cited articles, top authors, top countries, top journals, and top universities in IC research?

  • RQ6: What are the future directions of IC research?

The remainder of this paper is structured as follows. Section 2 describes the research methodology. Section 3 presents the findings using social network analysis and visualization maps. Finally, the paper ends with a discussion of the study's implications.

Research methods

This study aimed to systematically review IC academic research from the period 1975 to 2020. Following prior research (Bamel et al., 2022; Bellucci et al., 2021; Gaviria-Marin et al., 2018; Uyar et al., 2020), co-word analysis and social network analysis (in VOSviewer software) were used to map the conceptual structure of IC research. These methods are described in detail below.

Co-word analysis

The co-word analysis technique was first proposed by Callon et al. (1986). Since then, academic researchers have used co-word analysis to map the bibliometric structure of different fields, including creativity (Zhang, et al., 2015), environmental responsibility (Dai & Zhang, 2020; Yang et al., 2021), auditing (Uyar et al., 2020), and IC (Bamel et al., 2022; Quintero-Quintero et al., 2021).

Co-word analysis has been considered an effective method for content analysis and text mining (Feng et al., 2017; Zupic & Čater, 2015). One of its key advantages was that it revealed the conceptual structure of a discipline without the need to consult the full text (Romo-Fernández et al., 2013). Co-word analysis was based on the assumption that the co-occurrence of two or more keywords in a document indicated the correlation between them, and the higher the co-occurrence frequency, the stronger their relationship (An & Wu, 2011; Callon et al., 1986; Hu & Zhang, 2015; Ravikumar et al., 2015; Whittaker, 1989). Another assumption was that keywords were carefully selected by the authors and accurately represented the document's content (Feng et al., 2017). Co-word analysis can be used to quantify the links between research themes in a scientific discipline (Ding et al., 2001; Khasseh et al., 2017; Ravikumar et al., 2015; Sedighi, 2016), identify domains, subdomains, and hot topics (Dai & Zhang, 2020; et al., 2012; Zhang et al., 2015), and predict future trends (Uyar et al., 2020).

Social network analysis

Social network analysis (SNA) was used for exploring the latent content of scientific texts. It was introduced in the 1960s by the renowned sociologist Harrison White. Social networks were defined as a network of relationships or interactions, where the nodes were people or actors, and the edges represented the relationships or interactions between them (Abbasi et al., 2011). The main element in a social network was the actor or keyword (Köseoglu et al., 2019). The relationship between these actors (or keywords) constituted ties or links (Yang et al., 2012), the sum of which formed the graphical networks in SNA or the conceptual map and the knowledge network that reflected the current state of a specific subject area (Uyar et al., 2020).

SNA has been increasingly employed by researchers in various fields such as information science (Otte & Rousseau, 2002), economic geography (Ter Wal & Boschma, 2009), communities of practice, and natural resource management (Cross et al., 2006; Prell et al., 2009), water pollution management (Cantner & Graf, 2006; Ruzol et al., 2017), creativity (Zhang et al., 2015), environmental responsibility (Dai & Zhang, 2020; Yang et al., 2021), medicine (Xie et al., 2020), auditing (Uyar et al., 2020), knowledge transfer (Marchiori & Franco, 2020) and IC (Bamel et al., 2022), among others.

VOSviewer

VOSviewer has been used as a software tool for constructing and visualizing bibliometric networks, including networks of journals, researchers, or articles based on citation, bibliographic coupling, co-citation, or co-authorship relationships. VOSviewer also has text mining functionality that can be used to construct and visualize co-occurrence networks of keywords extracted from a body of scientific literature.

Data

This study used the Clarivate Analytics WOS database to retrieve data and VOSviewer software to construct social networks. WOS has been widely used as a reliable source for the systematic review of texts (Benavides-Velasco et al., 2013; Khan & Wood, 2015; Köseoglu et al., 2019; Kumar & Jan, 2013; Uyar et al., 2020; Yan et al., 2015; Zupic & Čater, 2015). The period between 1975 and 2020 was covered since prior to 1975, scientific journals seldom required keywords, and the content was mostly unavailable online.

After an in-depth review of the texts, 19 keywords1 were selected as the most extensive representatives of IC research which were used with the WOS database on November 22, 2021. This application resulted in 22,613 documents, of which 10,303 belonged to unrelated disciplines (e.g., philosophy, nursing, history) and were removed. The final statistical population, covered the disciplines of economics, management, business, finance, social science, interdisciplinary, information science, library science, operations research, management science, and public administration, and consisted of 12,310 documents. Of these, 8,413 were articles2, 824 were books3, and 3,073 were proceedings papers. For a more detailed analysis, the population was divided into two periods, i.e., 1975 to 2000 and 2001 to 2020, the latter of which represented over 90% of the documents. Sample statistics are reported in Table 1. Fig. 1 also demonstrates the data collection framework.

Table 1.

Sample selection process.

Sample
  1975–2020  1975–2000  2001–2020 
Total  22,613  2222  20,391 
Excluded  10,303  994  9309 
Final  12,310  1228  11,082 
Fig. 1.

Data Collection Framework.

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Findings

The overall trend of published documents between 1975 and 2020 was entirely upward, and, in the last two decades, IC has received increased attention from researchers. As shown in Fig. 2, out of a total of 12,310 documents, the highest number of publications belongs to 2019 with 895 documents.

Fig. 2.

Publication trend.

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Keyword frequency and trends

Co-occurrence refers to the presence, frequency, and proximity of similar keywords across articles and can reveal hot research topics. It includes thematically identical keywords, but not exactly the same. A total of 6,516 keywords were used in the documents between 1975 and 2020. Following prior research (Dai & Zhang, 2020; Zhang et al., 2015), a threshold was set for keyword frequency. The research period was divided into three parts: a threshold of 50 for the entire period (1975–2020); a threshold of 5 for the period 1975–2000; and a threshold of 50 for the period 2001–2020. Consequently, 159 keywords in the total time period, 55 in the period 1975–2000, and 156 in the period 2001–2020 met the specified thresholds. Table 2 shows the top 50 frequent keywords in these time periods.

Table 2.

Top 50 keywords in 3 periods.

Keywords (1975 - 2000)  Frequency  Keywords (2001 - 2020)  Frequency  Keywords (All Periods)  Frequency 
Growth  37  Performance  1191  Performance  1207 
Economic Growth  28  Innovation  808  Innovation  830 
Earnings  26  Knowledge  686  Knowledge  691 
Model  24  Impact  683  Impact  687 
Innovation  22  Management  649  Management  656 
Technology  22  Networks  643  Networks  646 
Policy  22  Growth  581  Growth  618 
Performance  16  Trust  478  Trust  481 
Models  15  Model  450  Model  474 
Endogenous Growth  14  Education  428  Education  440 
Trade  14  Research and Development  377  Investment  382 
Lung-run Growth  13  Investment  374  Research and Development  379 
Market  13  Determinants  355  Determinants  366 
Productivity  12  Firm  341  Firm  353 
Firm  12  Technology  317  Technology  339 
Education  12  Firms  306  Firms  313 
Determinants  11  Competitive Advantage  290  Economic Growth  310 
Economic Development  11  Productivity  285  Productivity  297 
Taxation  10  Economic Growth  282  Competitive Advantage  294 
Information  10  Firm Performance  265  Information  273 
Returns  Information  263  Firm Performance  266 
United States  Capabilities  235  Capabilities  236 
Turnover  Strategy  232  Strategy  236 
Mobility  Creation  226  Creation  228 
International Trade  Absorptive Capacity  211  Perspective  215 
Investment  Perspective  211  Absorptive Capacity  211 
Increasing Returns  Returns  185  Returns  194 
Patents  Inequality  182  Inequality  189 
Firms  Health  182  Quality  186 
Income  Quality  180  Models  183 
Power  Resource  174  Health  183 
Inequality  Models  168  Earnings  181 
Industry  Human Resource Management  167  Policy  180 
Management  Market  166  Resource  179 
Wages  Industry  164  Market  179 
Income Distribution  Organizations  162  Industry  171 
Protection  Policy  158  Organizations  167 
Rights  Behavior  155  Human Resource Management  167 
Limitation  Earnings  155  Behavior  158 
R&D  Governance  154  Governance  154 
Quality  Embeddedness  149  Embeddedness  152 
Equilibrium  Resource-based View  145  Protection  151 
Choice  Entrepreneurship  145  Trade  149 
Contracts  Protection  144  Entrepreneurship  148 
Technology Transfer  Antecedents  142  Resource-based View  147 
Organizations  Trade  135  Antecedents  142 
Countries  Framework  128  Framework  131 
Demand  Business  126  Income  131 
Knowledge  Income  124  Business  128 
Labor  Economics  119  Economics  122 

Fig. 3 illustrates the co-occurrence network. The most frequent keywords were divided into 6 clusters with six different colors. Keywords that were similar in content were grouped in a cluster. For example, the keywords "Performance" and "Networks" were in the blue cluster and the keywords "Knowledge" and "Strategy" were in the green cluster. The size of the circles indicated keyword frequency, and the thickness of the lines indicated the strength of co-occurrence within and between clusters. As the figure shows, all the clusters were interconnected, and there were strong relationships between the 6 clusters. This indicated the high interdependence of different areas of IC research.

Fig. 3.

Co-occurrence network of keywords (1975–2020).

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Overall, there were 159 keywords, 6 clusters, and 7,671 links in this network, with a total link strength of 44,502. Cluster 1 (red) with 56 keywords was the largest cluster and was represented by "Growth", Cluster 2 (green) had 34 keywords and was represented by "Knowledge", cluster 3 (blue) had 27 keywords and was represented by "Performance", cluster 4 (yellow) had 20 keywords and was represented by "Innovation", cluster 5 (purple) had 17 keywords and was represented by "Impact", and cluster 6 (turquoise) had five keywords and was represented by "Success".

Mapping keywords in terms of density can also be informative. In a density map, the closer a keyword is to the red areas, the higher is the keyword frequency. As shown in Fig. 4, keywords such as "Innovation", "Knowledge", "Networks", "Governance", "Business", "Company", "Performance", "Trust", "Market", "Model", "Management", "Effect", "Information", "Success", "Growth", and "Education" received a great deal of attention from researchers in recent years and were practically saturated. In contrast, keywords such as "Mediating Role", "Efficiency", "Gender", and "Firm Market Value" received relatively little attention. This finding could inform researchers about the most effective areas to focus on.

Fig. 4.

Keyword density map (1975–2020).

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Figs. 5 and 6 show the keyword density map for the period 1975–2000 (with a co-occurrence threshold of 5) and 2001–2020 (with a co-occurrence threshold of 50), respectively. According to these figures, keywords such as "Growth", "Economic Growth", "Model" and "Earnings" that featured prominently between 1975 and 2000 (keywords in the red and orange sections) faded between 2001 and 2020. Moreover, keywords such as "Performance" and "Management" that were not prominent between 1975 and 2000 became very common in the period 2001 to 2020 and were in the red areas of the map. In addition, new areas such as "Mediating Role", "Entrepreneurial Orientation", "Competitive Advantage", and "Knowledge Management" became more prominent between 2001 and 2020.

Fig. 5.

Keyword density map (1975–2000).

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Fig. 6.

Keyword density map (2001–2020).

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The word clouds for the four dimensions of IC (human capital, structural capital, relational capital, and social capital) are illustrated in Fig. 7 using VOYANT software. Word clouds are a weighted list for visualizing text or language data and have become increasingly popular in recent years (Jin, 2017). It must be noted that a larger font size indicates higher keyword frequency.

Fig. 7.

Word clouds for the four dimensions of intellectual capital.

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Most frequently cited articles

The top ten most frequently cited articles are listed in Table 3. The results show that the article titled "The Benefits of Facebook Friends: Social Capital and College Students' Use of Online Social Network Sites" was the most frequently cited article in the field of IC with 3,519 citations. This information can help researchers and readers identify the most relevant research studies.

Table 3.

Ten most frequently cited documents.

Title  Author(s)/ Publication Year  Journal  Total Citations  Average Citations per Year 
The Benefits of Facebook “Friends:” Social Capital and College Students’ Use of Online Social Network Sites  Ellison et al., (2007)  Journal of computer‐mediated communication  3519  270.692 
Social capital and value creation: The role of intrafirm networks  Tsai & Ghoshal (1998)  Academy of management Journal  2975  135.227 
Does Social Capital Have an Economic Payoff? A Cross-Country Investigation  Knack & Keefer (1997)  The Quarterly Journal of Economics  2877  125.086 
Why Should I Share? Examining Social Capital and Knowledge Contribution in Electronic Networks of Practice  Wasko & Faraj (2005)  MIS Quarterly  2307  153.8 
The role of social and human capital among nascent entrepreneurs  Davidsson & Honig (2003)  Journal of Business Venturing  2007  154.384 
The Network Structure Of Social Capital  Burt (2000)  Research in Organizational Behavior  1701  85.05 
The Influence of Intellectual Capital on the Types of Innovative Capabilities  Subramaniam & Youndt (2005)  Academy of Management Journal  1662  110.8 
The Contingent Value of Social Capital  Burt (1997)  Administrative Science Quarterly  1660  72.173 
Understanding knowledge sharing in virtual communities: An integration of social capital and social cognitive theories  Chiu et al. (2006)  Decision support systems  1578  112.714 
Learning and protection of proprietary assets in strategic alliances: building relational capital  Kale et al. (2000)  Strategic management journal  1511  75.55 

Co-citations between documents were also analyzed. A co-citation network can visualize the evolution of a scientific field. Co-citation refers to the frequency with which two documents are cited together in a third document (Small, 1973). The results indicated 268,369 co-citations across the documents. Fig. 8 shows the co-citation network of documents with at least 80 co-citations. It must be noted that 246 documents met this threshold. Overall, 246 documents, 4 clusters, and 19,455 links are shown in Fig. 8. In addition, the total link strength is 223,107. Cluster 1 (red) was the largest cluster with 73 documents. It was based on the article by Nahapiet & Ghoshal (1998), with 1,445 citations, 228 links, and a total link strength of 15,012. The second largest cluster in green had 65 documents. It was based on the article by Barney (1991) with 700 citations, 228 links, and a total link strength of 7,375. The third largest cluster was blue with 63 items. It was based on the article by Edvinsson (1997) with 897 citations, 217 links, and a total link strength of 8123. The fourth and last cluster was yellow with 45 items. It was based on the article by Lucas (1988) with 586 citations, 168 links, and a total link strength of 2,398.

Fig. 8.

Co-citation network (1975–2020).

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Top authors

Table 4 lists the top ten authors in terms of the number of documents published. According to these statistics, "Jeffrey Chen" is the top author in the field of IC with 32 documents. This list can help readers identify the most prominent researchers in this field.

Table 4.

Top authors.

Author  University/ Workplace  Number of Documents  Share of Total Documents (Percent) 
Jeffrey Chen  Accenture Chicago (USA)  32  0.26 
Leif Edvinsson  University of Lund (Sweden)  31  0.252 
Carol Yeh-Yun Lin  National Chengchi University (Taiwan)  31  0.252 
Keith E. Maskus  University of Colorado Boulder (USA)  30  0.244 
Tord Beding  TC-Growth AB Gothenburg (Sweden)  27  0.219 
John Dumay  Macquarie University (Australia)  26  0.211 
Markku Markkula  Aalto University (Finland)  23  0.187 
Lindon Robison  Michigan State University (USA)  23  0.187 
Nick Bontis  McMaster University (Canada)  22  0.179 
Florinda Matos  University of Lisbon (Portugal)  22  0.179 

The co-authorship network is also illustrated in Fig. 9. Co-authorship networks have been used in various studies to understand the structure of a research field (Andrikopoulos & Kostaris, 2017; Chan et al., 2009; Faraji et al., 2020; Kılıç et al., 2019). There were a total of 20,226 authors in the field of IC, but only those who had written at least eight documents and received ten citations were illustrated in Fig. 9. 65 authors met this threshold. Overall, there were 65 authors, 45 clusters, and 31 links. In addition, the total link strength was 120. Authors in a network have research collaborators. For example, "Nick Bontis" has collaborated with "Muhammad Khalique" and "Francesca Sgrò" on a number of research projects. Of course, "Nick Bontis" has also collaborated with "John Dumay", but these collaborations have not been extensive enough to form a co-authorship network.

Fig. 9.

Co-authorship network (1975–2020).

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Top countries

Table 5 shows the ten most prolific countries. Most articles on IC have been published in the United States (about 27% of articles). China (about 12% of articles) and the United Kingdom (about 8% of articles) were in second and third place, respectively. It must be noted that in terms of publications, there was a big gap between the United States and the next ranked countries.

Table 5.

Top countries.

Country  Documents  Share Of Total Documents (Percent) 
USA  3303  26.832 
China  1500  12.185 
England  1022  8.302 
Italy  649  5.272 
Spain  566  4.598 
Australia  492  3.997 
Germany  471  3.826 
Canada  444  3.607 
Taiwan  336  2.729 
France  290  2.356 

The co-authorship network of countries was also illustrated in Fig. 10. A total of 139 countries were involved in writing and publishing works, as suggested by the organizational affiliation of the authors, with only 68 countries meeting the threshold of at least 12 documents and 100 citations.

Fig. 10.

Co-authorship network of countries (1975–2020).

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Overall, there were 68 countries, 6 clusters, and 736 links in the network, with a total link strength of 3,574. The size of the circles indicated the number of documents published by each country through international collaboration. The larger the circle, the more active the country was in international research. The lines between the two countries indicated the frequency of collaboration, and the thicker the line, the more extensive the collaboration and the closer the relationship. For example, the United States had extensive collaboration with many countries, including China, Canada, South Korea, Australia, Taiwan, Singapore, and the United Kingdom.

Top journals

Table 6 lists the top ten publications by the number of articles (Panel A) and the number of citations (Panel B). This list can help researchers identify the most prominent journals involved with IC research to publish their findings. A total of 3,188 journals were active in this field. The “Journal of Intellectual Capital” was the top journal in terms of the number of articles with 208 documents, and the “Academy of Management Journal” was the most frequently cited journal with 11,914 citations. In Panel A, three of the top ten journals were conference journals.

Table 6.

Top journals.

Panel A: TOP 10 Journals by the Number of Documents
Journal  Scope  Country  Publisher  H-Index (2021)  Impact Factor (2021)  Documents  Share of Total Documents (Percent) 
Journal of Intellectual Capital  Business, Management and Accounting  United Kingdom  Emerald  89  7.198  208  1.690 
Proceedings of the European Conference on Intellectual Capital  Business, Management and Accounting  United Kingdom  Web of Science Group  193  1.568 
Social Indicators Research  Arts and Humanities  Netherlands  Springer  107  2.614  100  0.812 
Advances in Social Science Education and Humanities Research  Social Science, Education and Humanities  Netherlands  Atlantis Press  83  0.674 
Proceedings of the European Conference on Knowledge Management, ECKM  Decision Sciences  United Kingdom  Web of Science Group  10  80  0.650 
American Economic Review  Economics, Econometrics and Finance  United States  American Economic Association  297  9.170  79  0.642 
World Development  Economics, Econometrics and Finance  United Kingdom  Elsevier  175  5.278  75  0.609 
Proceedings of the International Conference on Intellectual Capital, Knowledge Management and Organisational Learning, ICICKM  Business, Management and Accounting  United Kingdom  Web of Science Group  73  0.593 
Procedia Social and Behavioral Sciences  Psychology  United Kingdom  Elsevier  53  71  0.577 
Applied Economics  Economics, Econometrics and Finance  United Kingdom  Taylor and Francis  85  1.835  66  0.536 
Panel B: TOP 10 Journals by the Number of Citations
Journal  Scope  Country  Publisher  H-Index (2021)  Impact Factor (2021)  Citations  Documents 
Academy of Management Journal  Business, Management and Accounting  United States  Academy of Management  318  10.194  11914  27 
Strategic Management Journal  Business, Management and Accounting  United Kingdom  John Wiley and Sons Ltd  286  8.641  9223  47 
American Economic Review  Economics, Econometrics and Finance  United States  American Economic Association  297  9.170  8558  79 
Journal of Computer-Mediated Communication  Computer Science  United States  Wiley-Blackwell  119  5.410  6654  13 
Quarterly Journal of Economics  Economics, Econometrics and Finance  United Kingdom  Oxford University Press  259  15.563  6038  21 
Journal of Business Venturing  Business, Management and Accounting  United States  Elsevier  182  12.065  5898  24 
Research Policy  Business, Management and Accounting  Netherlands  Elsevier  238  8.110  4898  60 
Journal of Labor Economics  Business, Management and Accounting  United States  University of Chicago  109  4.119  4640  46 
World Development  Economics, Econometrics and Finance  United Kingdom  Elsevier  175  5.278  4602  75 
Organization Science  Business, Management and Accounting  United States  INFORMS Institute for Operations Research and the Management Sciences  238  5.000  4276  29 

In addition, Fig. 11 illustrates the co-citation network of journals, which can help identify the most important journals in the field of IC. The results indicate 102,326 co-citations among journals. This network included journals with at least 290 citations. It must be noted that 199 journals met this threshold. Fig. 11 had 4 clusters, 199 journals, and 18,975 links with a total link strength of 4,301,902. Cluster 1 (red) with 87 journals was the largest cluster. It was based on the “American Economic Review” with 8,232 citations, 198 links, and a total link strength of 231,316. The second-largest cluster was cluster number 2 (green), with 50 journals. This cluster was based on the “Strategic Management Journal” with 9,491 citations, 198 links, and a total link strength of 487,632. The third-largest cluster was cluster number 3 (blue), with 43 journals. It was based on the “Journal of Intellectual Capital” with 11,542 citations, 197 links, and a total link strength of 294,930. The fourth and last cluster was cluster number 4 (yellow), with 19 journals. It was based on the “Research Policy” journal with 4,691 citations, 198 links, and a total link strength of 184,437.

Fig. 11.

Co-citation network of journals (1975–2020).

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Top universities

Table 7 lists the top ten universities by the number of articles. This list can help interested readers identify universities active in IC research for potential research collaborations. The results showed that a total of 5,920 universities and research institutes were involved in publishing research papers in the field of IC, and the “National Bureau of Economic Research (NBER)” was the world's leading research institute with 84 research papers. It must be noted that 7 of the top 10 universities were located in the United States. This suggests the substantial investment in IC research and the commitment of US universities to this important research area.

Table 7.

Top universities.

University/ Organization  Country  Documents  Share of Total Documents (Percent) 
National Bureau of Economic Research (NBER)  USA  84  0.682 
The University of Chicago  USA  74  0.601 
Harvard University  USA  73  0.593 
World Bank  International  73  0.593 
University of California, Berkeley  USA  70  0.569 
University of Pennsylvania  USA  70  0.569 
University of Illinois at  USA  69  0.561 
Wuhan University of Technology  China  69  0.561 
Michigan State University  USA  64  0.52 
University of Oxford  United Kingdom  64  0.52 

The co-authorship network between universities is illustrated in Fig. 12. A total of 5,920 universities and research institutes were involved in conducting and publishing IC research, as suggested by the organizational affiliation of the authors, with 97 universities meeting a threshold of at least 25 documents and 100 citations. Overall, there were 97 universities, 8 clusters, and 580 links, with a total link strength of 845. The size of the circles indicated the number of documents published through inter-university collaborations within and between countries. The larger the circle, the more active the university was in inter-university collaborations. The lines between the two universities indicated the frequency of collaboration, and the thicker the line, the more extensive the collaboration and the closer the relationship. For example, Harvard University had extensive collaborations with the University of Columbia, University of Pennsylvania, UC Berkeley, University of Melbourne, University of Manchester, and University of Massachusetts among others.

Fig. 12.

Co-authorship network between universities (1975–2020).

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Co-word analysis by geographical regions

In order to examine regional (continental) differences in IC research, the co-occurrence of keywords in Asia, Europe, North America, South America, Oceania, and Africa are highlighted in Table 8. The results showed that except for ​​South America, where the most frequently used keyword was “Innovation”, “Performance” was the most frequently used keyword in all the other continents. Moreover, to clarify the co-occurrence networks, the co-occurrence of the keywords was visualized for each geographical region (Figs. 13–18).

Table 8.

Top 20 keywords by regions.

Asia  Frequency  Europe  Frequency  North America  Frequency  South America  Frequency  Oceania  Frequency  Africa  Frequency 
Performance  368  Performance  482  Performance  50  Innovation  26  Performance  66  Performance  29 
Innovation  250  Innovation  343  Innovation  47  Performance  21  Innovation  50  Impact  24 
Impact  236  Knowledge  309  Impact  40  Impact  20  Management  44  Management  23 
Management  206  Growth  281  Knowledge  34  Growth  15  Impact  43  Determinants  18 
Networks  204  Networks  261  Management  30  Networks  15  Networks  41  Innovation  16 
Knowledge  190  Impact  252  Networks  30  Management  15  Knowledge  36  Growth  15 
Trust  168  Management  252  Growth  30  Knowledge  13  Growth  32  Education  15 
Growth  156  Trust  194  Education  30  Education  12  Model  27  Knowledge  14 
Model  140  Research & Development  183  Model  28  Determinants  Information  25  Investment  14 
Investment  120  Model  179  Firms  22  Model  Trust  24  Economic-Growth  14 
Firm Performance  119  Education  176  Investment  21  Productivity  Determinants  23  Technology  13 
Determinants  115  Determinants  145  Trust  19  Research & Development  Creation  23  Firm Performance  10 
Education  113  Investment  143  Earnings  19  Creation  Research & Development  22  Information  10 
Research & Development  105  Firm  134  Perspective  18  Economic- Development  Firms  21  Models 
Firms  104  Technology  132  Productivity  17  Inequality  Firm  21  Competitive Advantage 
Technology  98  Firms  127  Information  16  Protection  Technology  21  Industry 
Firm  92  Economic-Growth  126  Technology  15  Market  Education  21  Model 
Economic-Growth  91  Competitive Advantage  120  Firm  14  Quality  Firm Performance  19  Firm 
Competitive Advantage  83  Productivity  111  Determinants  14  Firm Performance  Economic-Growth  19  Trust 
Productivity  92  Capabilities  106  Embeddedness  14  Industry  Perspective  18  Creation 
Fig. 13.

Co-occurrence network in Asia (1975–2020).

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Fig. 14.

Co-occurrence network in Europe (1975–2020).

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Fig. 15.

Co-occurrence network in North America (1975–2020).

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Fig. 16.

Co-occurrence network in South America (1975–2020).

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Fig. 17.

Co-occurrence network in Oceania (1975–2020).

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Fig. 18.

Co-occurrence network in Africa (1975–2020).

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The interpretation of these regional co-occurrence networks was similar to Fig. 3. Each network was made up of several clusters, and keywords that were similar in content were grouped together. The size of the circles indicated keyword frequency, and the thickness of the lines indicated the strength of co-occurrence within and between clusters. For example, Fig. 13 consisted of 99 keywords, 5 clusters, and 2,791 links with a total link strength of 10,841. The red cluster with 30 keywords was the largest cluster represented by “Innovation”, the green cluster with 24 keywords was the second largest cluster represented by “Management”, the blue cluster with 17 keywords was the third-largest cluster represented by “Performance”, and the yellow and purple clusters with 14 keywords each were the fourth and fifth clusters represented by “Impact” and “Trust”, respectively. Moreover, the high interconnectedness of different clusters indicated strong relationships between different keywords. The interpretation of other regional co-occurrence networks (Figs. 14–18) was the same.

Discussion and conclusion

This study aims to provide a comprehensive overview of published papers in the field of IC between 1975 and 2020 using co-word analysis and social network analysis. The results show that the number of articles in this field has increased significantly in recent years. This study presents the state of research in IC, thereby enhancing the existing understanding of the conceptual structure of IC research and highlighting research gaps and possible avenues for future research.

The first research question deals with the main topics that make up the IC research domain. We performed the co-word analysis for three time periods (1975–2000, 2001–2020, and 1975–2020). The results show that between 1975 and 2000, “Growth”, “Economic Growth”, “Earnings”, “Model”, and “Innovation” are the most frequently used keywords; between 2001 and 2020, “Performance”, “Innovation”, “Knowledge”, “Impact”, and “Management” are the most frequently used keywords; and between 1975 and 2020, “Performance”, “Innovation”, “Knowledge”, “Impact”, and “Management” were the most frequently used keywords. This finding suggests a shift in researchers' focus and interest over the past three decades. In addition, more than 90% of IC articles have been conducted in the last 20 years, and as a result, the associated keywords also featured prominently in our analysis of the entire time period.

The second question addresses the dominant, saturated, fading, and emerging topics in the field of IC. We used keyword density maps for the three periods to answer this question. The dominant topics in the period 1975–2000 are “Growth”, “Economic Growth”, “Model”, and “Earnings”, which are frequently used during this period (keywords in the red and orange sections of Fig. 5). However, these recurring keywords received much less attention from researchers between 2001 and 2020. On the other hand, keywords such as “Performance” and “Management”, which did not feature prominently in the period 1975–2000, became much more common in the period 2001–2020 and are located in the red part of the map (Fig. 6). This finding could inform researchers about the areas that are most effective for academia and industry with the potential to provide policy, practice, and research implications.

The third research question is concerned with changes in IC research topics between 1975 and 2020. The results show that there have been significant changes in the dominant research topics between those three time periods. In the last 20 years (2001-2020), researchers have focused on new topics, none of which existed between 1975 and 2000. New topics like “Mediating Role”, “Entrepreneurial Orientation”, “Competitive Advantage”, and “Knowledge Management” have attracted the attention of researchers in the period 2001–2020 (compare Figs. 6 to 5).

The fourth question is about the differences in patterns and trends of IC research in different geographical regions. The results show that except for South America, where the most frequently used keyword is “Innovation”, “Performance” is the most frequently used keyword in all the other continents. This finding helps researchers discover relevant research topics as well as neglected topics in their geographic region and adjust their research accordingly.

The fifth research question deals with the most frequently cited articles, top authors, top countries, top journals, and top universities in the field of IC. The results show that the article titled “The Benefits of Facebook Friends: Social Capital and College Students' Use of Online Social Network Sites” published in 2007 is the most frequently cited article with 3,519 citations and an average of 271 citations per year, and “Jeffrey Chen” is the top author with 32 documents. The United States is the top country with 3,303 documents out of 12,310 documents. The results also indicated that the “Journal of Intellectual Capital” is the top journal in terms of the number of articles with 208 documents, and the “Academy of Management Journal” is the most frequently cited journal with 11,914 citations. The “National Bureau of Economic Research (NBER)” is the most prolific research institution with 84 documents. These findings inform researchers about the most prominent articles, researchers, countries, journals, and universities in the field of IC.

The sixth question addresses the future direction of IC research. According to Fig. 6, authors have recently focused on new areas such as “Mediating Role”, “Entrepreneurial Orientation”, “Competitive Advantage”, and “Knowledge Management”, and topics such as “Growth”, “Economic Growth”, “Model” and “Earnings” are practically saturated and are no longer areas of focus for researchers. These findings suggest that the role of strategy in IC research has become more prominent in recent years, and it is expected that the future direction of IC research will be toward interdisciplinary fields and efforts to solve problems on a larger scale (Capatina et al., 2017). For example, more research has been done on entrepreneurial orientation in recent years (Monteiro et al., 2019). Furthermore, more investigations of the mediating mechanisms in IC research are becoming more prevalent (Asiaei et al., 2020). This corroborates the notion that knowledge assets seldom are able to influence performance directly and immediately (Asiaei & Jusoh, 2017). Instead, they often affect these organizational outcomes through chains of cause-and-effect relationships involving two or three intermediate stages (Kaplan & Norton, 2001). Last but not least, in order to develop IC research in its next stage, it is crucial to follow the proponents of the recent trend in the field (Garanina et al., 2021; Dumay & Guthrie, 2019) that advocates going beyond just being interdisciplinary approaches. According to Jacobs & Cuganesan (2014, p. 1254), multidisciplinary teams must be formed that come from “government agencies, corporatized government entities, not-for-profit organization [s] and private sector businesses”, not to mention IC and socially-minded researchers. Hence, IC scholars need to consider transforming from being interdisciplinary to multidisciplinary since “interdisciplinary research involves researchers are crossing boundaries between disciplines as part of their analysis, whereas multidisciplinary research involves researchers going out in the world and interacting with people and organizations as part of the solution” (Dumay & Guthrie, 2019, p. 2299).

This paper provides several policies, practices, and research implications for the further development of the IC field. First and foremost, this study contributes to the IC literature by offering fresh insights into the conceptual structure of IC research through an overarching co-word and social network analyses based on WOS as a comprehensive database. Furthermore, while this study provides a comprehensive picture of the current state of IC research, the results can pave the way for future studies by shedding light on the gaps in the field and providing direction for future research. Organizations of all types and sizes can use these findings to make changes to their communications, reporting, and control systems, using the results presented in this study. Policymakers and standard-setters can use the IC topics identified to assist with future regulations and law-setting deliberations.

Finally, it must be noted that the present study is not without limitations. The most important limitation is related to the constraints of the WOS database. Although WOS is a comprehensive database, it does not cover all IC research and only includes documents in SCIE, SSCI, AHCI, ESCI, CPCI, BKCI, and CCR indexes. Therefore, readers should be careful in generalizing the results. Additionally, in bibliometric studies, WOS only analyzes the words in the title, abstract, and keywords of articles and does not analyze full texts. Therefore, future research can investigate IC research in more depth. For example, researchers can examine the industries in which these studies have been conducted or how they differ in terms of methodology (quantitatively, qualitatively, or mixed), data collection, and the key variables used. Lastly, future studies may examine what theories are involved in IC studies, thereby demonstrating the most dominant theoretical perspectives in the IC setting.

Data availability

The data used in the present research are available on the Web of Science database.

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Omid Faraji is an Assistant Professor in Accounting. Some of his papers have been published in international peer-reviewed journals such as Emerging Markets Review and Sustainability Accounting, Management and Policy Journal. His research area includes sustainability, management accounting and audit quality. Omid Faraji can be contacted at: omid_faraji@ut.ac.ir

Kaveh Asiaei is a Senior Lecturer in Accounting at the School of Business at Monash University (Malaysia Campus). His research interests are intellectual capital, performance measurement systems, and sustainability accounting. Kaveh has published articles in various outlets in the field such as the Journal of Knowledge Management, Management Decision, Journal of Intellectual Capital, Business Strategy and the Environment, International Journal of Accounting Information Systems, Corporate Governance: An International Review, Journal of Management Control, and Meditari Accountancy Research among others. Kaveh Asiaei is the corresponding author and can be contacted at: Kaveh.Asiaei@monash.edu

Zabihollah Rezaee is the Thompson-Hill Chair of Excellence, PhD coordinator and Professor of Accountancy at the University of Memphis and has served a two-year term on the Standing Advisory Group (SAG) of the Public Company Accounting Oversight Board (PCAOB). Professor Rezaee has published over 220 articles and made more than 230 presentations, written 11 book chapters. He has also published twelve books titled, among others, Financial Institutions, Valuations, Mergers, and Acquisitions: The Fair Value Approach; Financial Statement Fraud: Prevention and Detection; U.S. Master Auditing Guide 3rd edition; Audit Committee Oversight Effectiveness Post-Sarbanes-Oxley Act; Corporate Governance Post-Sarbanes-Oxley: Regulations, Requirements, and Integrated Processes. Zabihollah Rezaee can be contacted at: zrezaee@memphis.edu

Nick Bontis is a Chair, Strategic Management at the DeGroote School of Business at McMaster University. He received his PhD from the Ivey Business School at Western University. He is the first McMaster professor to win Outstanding Teacher of the Year and Faculty Researcher of the Year simultaneously. He is a 3M National Teaching Fellow, an exclusive honor only bestowed upon the top university professors in Canada. He is recognized in the world as a leading Professional Speaker and a Consultant. Nick Bontis can be contacted at: nbontis@mcmaster.ca

Ehsan Dolatzarei is a PhD candidate in Accounting at the University of Tehran. His main research in progress embraces some interesting topics in the areas of sustainability accounting, intellectual capital, and auditing. Ehsan Dolatzarei can be contacted at: Ehsan.dzarei@ut.ac.ir

Intellectual Capital, Human Capital, Structural Capital, Organizational Capital, Relational Capital, Social Capital, Intellectual Assets, Intangible Capital, Intangibles, Intangible Assets, Knowledge Assets, Intangible Resources, Knowledge Resource, Intellectual Property, Knowledge Capital, IP Assets, Intellectual Asset Management, Intangible Property, and Knowledge-Based Assets

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