Thirty years of the Journal of Derivatives and Quantitative Studies: a bibliometric analysis

Jun Sik Kim (Division of International Trade, Incheon National University, Incheon, Republic of Korea)
Sol Kim (College of Business, Hankuk University of Foreign Studies, Seoul, Republic of Korea)

Journal of Derivatives and Quantitative Studies: 선물연구

ISSN: 1229-988X

Article publication date: 10 September 2021

Issue publication date: 4 November 2021

1763

Abstract

This paper investigates a retrospective on the Journal of Derivatives and Quantitative Studies (JDQS) on its 30th anniversary based on bibliometric. JDQSs yearly publications, citations, impact factors, and centrality indices grew up in early 2010s, and diminished in 2020. Keyword network analysis reveals the JDQS's main keywords including behavioral finance, implied volatility, information asymmetry, price discovery, KOSPI200 futures, volatility, and KOSPI200 options. Citations of JDQS articles are mainly driven by article age, demeaned age squared, conference, nonacademic authors and language. In comparison between number of views and downloads for JDQS articles, we find that recent changes in publisher and editorial and publishing policies have increased visibility of JDQS.

Keywords

Citation

Kim, J.S. and Kim, S. (2021), "Thirty years of the Journal of Derivatives and Quantitative Studies: a bibliometric analysis", Journal of Derivatives and Quantitative Studies: 선물연구, Vol. 29 No. 4, pp. 258-279. https://doi.org/10.1108/JDQS-08-2021-0020

Publisher

:

Emerald Publishing Limited

Copyright © 2021, Jun Sik Kim and Sol Kim

License

Published in Journal of Derivatives and Quantitative Studies: 선물연구. Published by Emerald Publishing Limited. This article is published under the Creative Commons Attribution (CC BY 4.0) licence. Anyone may reproduce, distribute, translate and create derivative works of this article (for both commercial and non-commercial purposes), subject to full attribution to the original publication and authors. The full terms of this licence maybe seen at http://creativecommons.org/licences/by/4.0/legalcode.


1. Introduction

In October 1991, Prof. Sang Kee Min, who was affiliated with Seoul National University, founded the Korean Association of Futures and Options (KAFO) to explore and disseminate theory, empirical analyses and systems in the exchanged trade and over-the-counter derivatives and related fields. KAFO published the first issue of Korean Journal of Futures and Options (KJFO) in September 1993. To expand the issues covered by KAFO, its name was changed to Korea Derivatives Association (KDA) in January 2008. At present, KDA has regular seminars, holds international conferences, [1] publishes a journal and hosts symposium on policies related to derivatives. In June 2020, to promote interaction between domestic and foreign scholars, KJFO's name was changed to Journal of Derivatives and Quantitative Studies (JDQS), with Emerald Publishing as publisher.

After initially focusing on derivatives markets, the journal expanded the journal's focus to include all derivatives and quantitative finance, including behavioral finance, corporate finance, empirical asset pricing, market microstructure, international finance and banking. JDQS shared research on derivatives and quantitative finance with scholars in finance area, institutional investors like brokerage firms and asset management firms, policymakers, financial data providers and other market participants.

In 2022, JDQS will celebrate its 30th anniversary. To commemorate the 30th anniversary, we look back at the history of JDQS using bibliometric analysis. Many researchers investigate special studies based on bibliometrics in various areas (Merigó and Yang, 2016; Baker et al., 2020c; Donthu et al., 2020a, b; Kumar et al., 2020a, b, c; Valtakoski, 2020; Baker et al., 2021a; Kumar et al., 2021). Specifically, some literature analyzes the bibliographic data of journals on finance based on bibliometrics (Schwert, 1993; Tunger and Eulerich, 2018; Baker et al., 2019, 2020b, 2021d; Zheng and Kouwenberg, 2019; Baker et al., 2020a, 2021b, c; Burton et al., 2020). In this paper, we analyze the historical pattern of publications in the journal and find the factors that affect citations of its articles. We also assess the effect of the changes in the journal on its visibility.

Based on the bibliometric and bibliographic data, we answer eight questions:

Q1.

What are the patterns in JDQS's annual publications, citations and annual citation indices?

Q2.

Who are JDQS's most prolific authors and author-affiliated institutions?

Q3.

What are JDQS's most frequently cited articles?

Q4.

Which journals most often cite JDQS articles?

Q5.

What are JDQS's main keywords?

Q6.

What are JDQS's authorship networks?

Q7.

Which of JDQS articles' attributes are associated with its impact?

Q8.

How has publication by Emerald Publishing and changes in editorial and publishing policies affected JDQS's visbility?

The rest of the paper is organized as follows. Section 2 introduces the bibliographic data and bibliometric methodology. Section 3 reports on the journal's performance results. Section 4 provides analyses of keyword-level and author-level networks based on the co-occurrence of keywords and co-authorships. Section 5 contains a regression analysis of articles' attributes and citations. Section 6 evaluates the effect of changing the publisher and editorial and publishing policies on the journal's visibility. Section 7 concludes.

2. Data and methodology

This section describes the data used in the bibliometric analysis and introduces the bibliometric methodology used to answer our study questions. JDQS published 290 articles between 2002 and 2020 [2]. The empirical analyses are based on data from the Korea Citation Index (KCI) [3] and the Web of Science (WOS). KCI provides data on JDQS, including its publications, citations and articles' attributes, beginning in 2002, and other data, including citation indices, the journals that cite JDQS or are cited by JDQS, and the most viewed JDQS articles, beginning in 2008. In addition, we extract information on JDQS articles' authors and keywords from KCI-Korean Journal Database of WOS between 2002 and 2020. The number of downloads of JDQS's recently published articles is obtained from Emerald Publishing [4].

Fairthorne (1969) introduces bibliometrics as a quantitative treatment of the properties of recorded discourse and the behaviors that are related to it. Broadus (1987) applies the bibliometric methodology to graph theoretic and statistical tools to analyze bibliographic data. Zupic and Čater (2015) suggest the bibliometric methods of citation analysis, co-citation analysis, bibliographical coupling, co-author analysis and co-work analysis. Following them, we employ performance analysis to evaluate authors' and institutions' publication performance and use science mapping analysis at the keyword and author levels to present visually the structure of scholarly knowledge.

We employ performance analysis with KCI data to answer our first four questions (Q1-Q4). We use the performance analysis to analyze patterns in JDQS's publications, citations and citation indices over the years. In addition, we find the authors, institutions and articles significantly contributing to JDQS. We also consider the journals that cite JDQS most often and that JDQS cites most often to analyze the citation pattern among journals.

To investigate the relationship among keywords and authors (Q5-Q6), we employ science mapping by analyzing keyword-level networks and author-level networks using the KCI-Korean Journal Database of WOS. We use VOSviewer [5] for bibliographic analysis and cluster analysis at the keyword and author levels.

To study the effect of JDQS articles' attributes on citations of the articles (Q7), we conduct a regression analysis with KCI data. We regress the citations for each article on the article's attributes.

To answer our final question (Q8), we compare the number of downloads of JDQS articles published by Emerald Publishing with the number of views of the most viewed JDQS articles until 2019. Based on this comparison, we check the effect of publication by Emerald Publishing on the articles' visibility.

3. Performance analysis

In this section, we identify JDQS's yearly publications, citation patterns, most frequently cited articles and journals that cite JDQS articles based on a performance analysis.

Table 1 shows JDQS's yearly publication and citation trends between 2002 and 2020. Annual publications increased from 10 in 2002 to 27 in 2014 before decreasing to 16 in 2020. In addition, while JDQS's citations increased to 153 in 2011, that number fell during the most recent five years. JDQS's average number of citations excluding self-citations is 51.79, which is about 70% of average citations including self-citations. The h-index [6] increased from 5 in 2002 to 8 in 2011, indicating that eight documents had 8 or more citations in 2011. However, the h-index decreased to 2 in 2020.

We check citation indices like the impact factor (IF) and centrality index, as reported by the KCI. Table 2 presents the IF and centrality index between 2008 and 2019. The KCI defines IF as the average number of citations per paper published in the journal during a specific period. We focus on IFs based on the citations during recent two years and five years. In addition, the centrality index is suggested by the WOS of Clarivate Analytics and Scopus of Elsevier. The KCI explains that while the IF depends on only the number of citations to a journal, the centrality index additionally considers the number and prestige of the citing journals and is computed over a journal citation network [7]. Thus, the main factor of the centrality index is not only the number of citations to a given journal but also the number and the reputation of journals that cite the papers in a given journal. The KCI-IF based on the citations during the most recent two years increased from 0.75 in 2002 to 1.59 in 2014 and decreased to 0.66 in 2020. The KCI-IF based on the citations, excluding self-citations, during the most recent two years and the KCI-IF based on the citations during the most recent five years have a similar pattern as well. The centrality index based on the data during the most recent three years increased from 2.972 in 2012 to 5.198 in 2014 and decreased to 0.798 in 2020.

Q2 concerns JDQS's most prolific authors and author-affiliated institutions. Table 3 shows the 11 JDQS authors with the most articles between 2002 and 2020. Topping the list is Kook-Hyun Chang with 11 articles and 69 citations, followed by Sun-Joong Yoon with 11 publications and 67 citations and Byung Jin Kang with 11 publications and 60 citations. Kook-Hyun Chang, Sun-Joong Yoon, Byung Jin Kang and Sol Kim tie for the highest h-index at 5. Among the 11 most prolific JDQS authors, Jae Ha Lee has the most citations per publication (11.00).

Table 4 presents the 12 author-affiliated institutions published most often in JDQS between 2002 and 2020. Soongsil University leads the list with 30 articles and 79 citations. Next is Hankuk University of Foreign Studies with 28 articles and 171 citations, followed by Korea Advanced Institute of Science and Technology with 22 articles and 118 citations. Hankuk University of Foreign Studies has the highest h-index at 8, and Seoul Women's University has the most citations per publication at 8.33.

Q3 asks for JDQS's most frequently cited articles. Table 5 shows the 20 most cited articles between 2002 and 2020. Heading the list is Kang (2009), cited 33 times, which explores the price discovery process using the high-frequency data on the KOSPI200 index, KOSPI200 futures and KODEX200 using the vector error correction model and the multivariate generalized auto regressive conditional heteroscedasticity model. Next is Yun and Lee (2003), cited 28 times, which examines the impact of trading volume by specific types of traders, such as individual investors, institutional investors and foreign investors, on the returns and volatility in the KOSPI200 futures market, followed by Kwon et al. (2011), cited 27 times, investigating the incentives of derivatives use and its effect of the risk management and value of firms in Korea. The remaining 17 publications have between 16 and 26 citations each.

Q4 deals with the journals that cite JDQS articles most often. Table 6 reports the 10 journals that cite JDQS articles most often (until 2019). Most citations come from journals in business management. Subject fields are classified by KCI [8]. Ranking (KCI-IF(2019, 2 years)) is determined based on the KCI-IF in 2019 computed from the citations during the most recent two years in each subject field. Not surprisingly, JDQS cites its own publications most often, with 432 citations, followed by Korean Journal of Financial Engineering with 115 citations, The Korean Journal of Financial Management with 100 citations and Korean Journal of Financial Studies with 96 citations.

Table 7 shows the 10 journals that cite JDQS articles most often over three four-year periods. The top three journals other than JDQS are as follows:

  1. Between 2008 and 2011, the journal that cited JDQS articles most often was the Korean Journal of Financial Engineering with 35 citations, followed by The Korean Journal of Financial Management with 31 citations and the Asian Review of Financial Research with 26 citations.

  2. Between 2012 and 2015, one journal joins this list – Korean Journal of Financial Studies with 34 citations, while The Korean Journal of Financial Management with 34 citations and the Korean Journal of Financial Engineering with 25 citations, remain on the list of top-citing journals of JDQS articles.

  3. Between 2016 and 2019, in addition to the Korean Journal of Financial Engineering with 12 citations and The Korean Journal of Financial Management with 10 citations, the Journal of Knowledge Studies, with eight citations, joins the list of the top-citing journals of JDQS articles.

4. Analysis of keyword-level and author-level networks

In this section, we analyze the keyword-level and author-level networks using the KCI-Korean Journal Database of WOS. Q5 explores JDQS's central themes and the relationships between authors of the articles in JDQS. We analyzed the co-occurrence of keywords and co-authorship of authors to identify keyword-level and author-level networks. We used factional counting as a counting method in VOSviewer. Since the average numbers of keywords and authors are 4.76 and 1.94, respectively, the minimum number of occurrences of keywords and authors set up to 5 and 2, respectively.

Figure 1 shows the keyword-level network limited to only the largest set of connected items with 14 items, five clusters and 21 links based on the weights of occurrences [9]. Cluster 1 consists of Behavioral finance, Implied volatility, Information asymmetry and Jump risk. Behavioral finance, Implied volatility and Information asymmetry are most important keywords in the cluster 1, with six occurrences each. Cluster 2 includes rbitrage trading, Liquidity and Price discovery. Price discovery, with 16 occurrences, is the most important keyword. Cluster 3 contains ELS, KOSPI200 futures and VaR. KOSPI200 futures is the most critical keyword with seven occurrences. Cluster 4 comprises KOSPI200 and Volatility. Volatility has the most occurrence frequency, with 10 occurrences. Cluster 5 consists of KOSPI200 options and Market efficiency. KOSPI200 options is the most crucial keyword with 16 occurrences.

Figure 2 presents that in a network limited to only the largest set of connected items with 25 items, six clusters and 34 links based on the weights of documents. In cluster 1, Yuen Jung Park is the most critical author with five documents. Uk Chang has published the most five articles in cluster 2. Cluster 3 has the most important author, Tong Suk Kim, with four publications. Sun-Joong Yoon and Byung Jin Kang tie for the most crucial author with 11 articles in cluster 4. Youngsoo Choi with seven articles and Bong-Chan Kho with five articles are the important authors with most publications in clusters 5 and 6, respectively.

5. Articles attributes and citations

Q5 asks for the effect of JDQS articles' attributes on the articles' numbers of citations. Following Valtakoski (2020), Stremersch et al. (2007) and Baker et al. (2020a, 2021b), we employ negative binomial regression to confirm the relationships between the JDQS articles' characteristics and citations. Table 8 presents the variable descriptions and summary statistics.

5.1 Variables

5.1.1 Dependent variable

Total citations is defined as a reference to other sources. The total number of an article's citations measures the effect of an articles on academia (Diamond, 1989; Laband and Piette, 1994; Burton and Phimister, 1995; Pieters and Basumgartner, 2002). The mean and the standard deviation of Total citations are 4.88 and 5.79, respectively. Since Total citations is countable, and its mean is different from its variance, the negative binomial regression is appropriate for our study (Stremersch et al., 2007; Baker et al., 2020a, 2021b; Valtakoski, 2020).

5.1.2 Control variable

Article age, defined as the number of years between publication year of the article and 2020, is included in our model since the literature on bibliometric studies proposes that an article's age has an effect on citations (Landes and Posner, 1996; Ayres and Vars, 2000; Stremersch et al., 2007; Baker et al., 2020a). In addition, the literature, including Stremersch et al. (2007) and Meyer et al. (2018), finds that the relationship between age and citations is nonlinear, after controlling for a time-squared term. We also employ Demeaned age squared as a control variable to consider this nonlinearity. The coefficient estimates on Article age and Demeaned age squared are expected to be positive and negative, respectively, based on the results in Stremersch et al. (2007).

5.1.3 Independent variable

Stremersch et al. (2007) show a conceptual framework with three perspectives on the impact of the scientometric attributes of articles and authors on the number of an article's citations and conduct an empirical analysis to confirm this framework with a sample of five major journals in marketing. The universalist perspective is that the articles are cited for “what” the authors say, such as the quality and the domain of the article, while the social constructivist perspective is that the articles are cited based on “who” the authors are, such as their visibility and personal promotion, and the presentation perspective is that the articles are cited for “how” the authors say what they say, such as title length, attention grabbers and expositional clarity. We use the variables in these three perspectives.

Based on the universalist perspective, an article's citations depend on its contents, such as its quality and domain (Stremersch et al., 2007; Meyer et al., 2018; Baker et al., 2020a, 2021b; Dang and Li, 2020). Therefore, six of the variables we employ are based on the articles' contents:

  1. Article length is the article's number of pages. Since the longer articles are likely to be cited by other sources, Article length may be positively related with citations (Stremersch et al., 2007; Meyer et al., 2018; Baker et al., 2020a, 2021b; Dang and Li, 2020), so the coefficient estimate on Article length is expected to be positive.

  2. Article order is an article's order in an issue. Articles located earlier in an issue are likely to have more visibility than those that are located later in the issue (Stremersch et al., 2007; Dang and Li, 2020; Baker et al., 2021b), so the coefficient estimate on Article order is expected to be negative.

  3. Lead article is a dummy variable that indicates whether an article is the first article in an issue and that takes the value of 1 if the article is located first in an issue, and 0 otherwise. Since editors are likely to place articles with the highest quality in the first position of an issue (Schwert, 1993; Baker et al., 2020a, 2021b; Dang and Li, 2020), the lead article is likely to receive more visibility and additional citations. Therefore, the coefficient estimate on Lead article is expected to be positive. Among the 290 publications, this variable takes the value of 1 in 62 publications.

  4. Funding is a dummy variable that indicates whether an article is supported by financial resources and that takes the value of 1 if the article receives financial support, and 0 otherwise. Because an investigation that is supported by financial resources is likely to have better research sources (Dang and Li, 2020; Baker et al., 2021b), it may be of high quality and receive additional citations. Therefore, the coefficient estimate on Funding is expected to be positive. Among the 290 publications, this variable takes the value of 1 in 166 publications.

  5. Conference is a dummy article that indicates whether the article was presented at a conference before publication and that takes the value of 1 if the article was presented in a conference before publication, and 0 otherwise. Since articles that are presented at conferences are discussed and reviewed by other scholars who attend the conference, the authors of these articles are likely to have more opportunity to improve their articles' quality than those that are not presented at conferences (Meyer et al., 2018; Dang and Li, 2020; Baker et al., 2021b). Therefore, the coefficient estimate on Conference is expected to be positive. Among the 290 publications, 42 publications have been presented at conferences.

  6. KCI is a dummy variable that indicates whether an article was published in a journal indexed in the KCI and takes the value of 1 if the article was published in such a journal, and 0 otherwise. The KCI is a database of domestic journals, articles and references. A journal's qualification to apply for inclusion in the KCI is related to the regularity and punctuality of publication, the number of reviewers per article, establishment and notification of research ethics regulations, article titles and author names in foreign languages, diversity of paper submissions and accreditation by the KCI. A journal can be indexed in the KCI if its score for system evaluation, content evaluation and special evaluation in the academic field is 85 or more (out of 100) [10]. Since the journals that are indexed in the KCI are likely to be of higher quality and receive more visibility than journals that are not, [11] the coefficient estimate on KCI is expected to be positive.

According to the social constructivist perspective, an article's citations vary with its social and intellectual connectivity (Stremersch et al., 2007; Baker et al., 2020a, 2021b; Valtakoski, 2020). We employ several of the variables that the literature suggests capture the social constructivist perspective as the determinants of an article's social and intellectual connectivity in our model.

  1. Number of authors indicates the number of authors who were involved in the article. Since an article that has more authors is likely to have greater social connectivity and visibility, it may receive more citations than those that have fewer authors (Stremersch et al., 2007; Baker et al., 2020a, 2021b; Valtakoski, 2020). Therefore, the coefficient estimate on Number of authors is expected to be positive.

  2. Foreign authors is a dummy variable that takes the value of 1 if the article has a foreign author (i.e. not Korean author), and 0 otherwise. Having a foreign author may lead to an article's having greater visibility in foreign academia and so to have more citations than would be the case if it had only domestic authors (i.e. Korean author) [12]. Therefore, the coefficient estimate on Foreign authors is expected to be positive. Among the 290 publications in our sample, five publications have a foreign author.

  3. Foreign institutions is a dummy variable that takes the value of 1 if the affiliation of at least one author is a foreign institution (i.e. not Korean institution), and 0 otherwise. Similar to Foreign authors, articles by authors who are affiliated with foreign institutions are likely to receive more visibility and more citations than articles whose authors are affiliated only with domestic institutions (i.e. Korean institution). Therefore, the coefficient estimate on Foreign institutions is expected to be positive. Among the 290 publications in our sample, eight publications take the value of 1 for Foreign institutions.

  4. Nonacademic authors is a dummy variable that takes the value of 1 if the at least one author is affiliated with nonacademic institutions, and 0 otherwise. Since a nonacademic author's involvement is likely to provide a practical viewpoint (Burgess et al., 2017), the visibility of the article among practitioners could increase. On the other hand, an article with a large proportion of nonacademic authors could contribute little to academia and have less visibility among the scholars who are most likely to cite the article (Baker et al., 2021b). Therefore, the coefficient estimate on Nonacademic authors is expected to be either positive or negative. Among the 290 publications in our sample, 73 publications have at least one nonacademic author.

  5. Number of references indicates the number of references cited by an article. Since an article with more references is likely to have intellectual connectivity with the studies it cites and, thus, greater visibility to their authors, it is likely to receive additional citations (Peters and van Raan, 1994; Stremersch et al., 2007; Meyer et al., 2018; Valtakoski, 2020). Therefore, the coefficient estimate on number of references is expected to be positive.

According to the presentation perspective, the number of an article's citations depends on its presentation (Stremersch et al., 2007; Meyer et al., 2018; Baker et al., 2020a, 2021b; Dang and Li, 2020). The presentation-related variables we use are explained as follows.

  1. Length of title is the total number of words in a title of an article. Stremersch et al. (2007) mention that the direction of the effect of Length of title on article's citations is difficult to posit ex ante and find that length of title does not affect the number of citations [13]. Thus, the coefficient estimate on Length of title is expected to be either positive or negative.

  2. Number of keywords refers to the number of keywords in an article. Since the keywords help potential readers in searching for an article in various databases (Stremersch et al., 2007; Baker et al., 2020a, 2021b; Valtakoski, 2020), articles with more keywords are likely to receive additional citations. Therefore, the coefficient estimate on Number of keywords is expected to be positive.

  3. Language is a dummy variable that takes the value of 1 if the article written in foreign language, and 0 otherwise (i.e. written in Korean). Since in reality JDQS's articles are written in English or Korean, Language indicates whether the article is written in English or Korean. Generally, articles that are written in English have more visibility to scholars in various countries [14]. Conversely, since JDQS is a domestic (i.e. Korean) journal, and we conduct this analysis using KCI data, and most of KCI's citations stem from other domestic journals, articles that are written in Korean receive more visibility. Therefore, the coefficient estimate on Language is expected to be either positive or negative. Among the 290 publications in our sample, 34 publications are written in foreign language.

5.2 Regression analysis

Table 9 shows the correlations between the variables in our model. Since we focus on the effect of an article's attributes on its citations, the correlations between Total citations and other variables are examined. The correlation between Article age and Total citations is positive and significant at the 1% level, consistent with our expectation. Although the correlation of Demeaned age squared to Total citations is insignificant, the sign of that is negative, as expected. Conference is positively correlated with Total citations, and KCI has a negatively significant correlation. Foreign institutions has a negative correlation, which is counter to our expectations. This result may be due to JDQS's being a domestic journal, and almost all citations of the articles in JDQS being from authors who are affiliated with domestic institutions. Such authors may contribute more citations than those who are affiliated with foreign institutions. Nonacademic authors is negatively correlated with Total citations, which confirms our expectations. In addition, the correlation between Language and Total citations is negative and significant at the 1% level, which is consistent with JDQS's being a domestic journal. The result for Language is also consistent with that for Foreign institutions.

The empirical investigation focuses on whether an article's attributes affect its citations. The regression model is examined as follows:

(1)Totalcitationsi=α+βControlsi+γAttributesi+ϵi,
where Total citationsi is the number of citations of article i, Controlsi is the vector of article i's control variables and Attributesi is the vector of article i's attributes.

Table 10 shows the regression results. In model I, which includes the control variables only, the coefficient estimate on Article age is positive and significant at the 1% level. Consistent with results in the literature (Stremersch et al., 2007; Baker et al., 2020a, 2021b), the coefficient estimate on Demeaned age squared is negative and significant at the 1% level. This coefficient estimate captures the nonlinearity of the relationship between Article age and citations. In model II, which uses all independent variables, the coefficient estimate on Demeaned age squared is less significant than that in model I, but it is negative and still significant at the 10% level. In addition, the addition of all independent variables does not have an effect on the coefficient estimate on Article age.

As for the universalist variables, the coefficient estimate on Conference is positive and significant at the 5% level. This result confirms that articles that were presented at a conference before publication are positively associated with the citations, consistent with our expectation.

Among the social constructivist variables, Nonacademic authors has a negative relationship with Total citations. This result indicates that articles that have nonacademic authors do not cite the articles in JDQS, an academic journal, often.

For the presentation variables, Language is negatively associated with Total citations. This result is consistent with our conjecture that since most of citations of articles in JDQS come from other domestic journals, articles written in English may contribute little to citations of articles in JDQS.

6. Effect of changes in the publisher and editorial and publishing policies on visibility

Emerald Publishing began publishing JDQS in 2020 (Vol. 28, No. 2), a change that JDQS's editorial team expected to increase the number of citations of JDQS's articles by scholars not only in Korea but also in other countries. To improve the journal's visibility among scholars in various, JDQS's editorial team required that all articles published in JDQS be written in English. In addition, the editorial team expanded the journal's scope to all functional areas of derivatives and quantitative finance, including behavioral finance, corporate finance, empirical asset pricing, market microstructure, international finance and banking, and changed JDQS to a fully open-access journal [15]. In this section, we compare the numbers of views and downloads before and after Emerald Publishing took over publishing to confirm its effect on JDQS's visibility.

Table 11 shows the 10 most viewed JDQS articles between 2008 and 2019, before Emerald Publishing took over publishing. Topping the list is Kim et al. (2011), an article that suggests a new numerical algorithm for pricing equity-linked security based on the finite difference method with exit-probability, which was viewed 868 times. Next is Ohk (2005), an article that examines the effect of index futures trading on the price volatility and liquidity of spot markets using data on KOSPI and KOSPI200 futures, which was viewed 542 times. Next are Kim et al. (2015), an article that studies the effect of leveraged and inverse ETFS on the price and volatility of the Korean market, which was viewed 501 times, and Lee et al. (2019), an article that provides a methodology for estimating the risk-return relationship of alternative asset investments in the mean-variance framework, which was viewed 478 times. The remaining six publications on the list have between 386 and 466 views each.

Table 12 shows the number of downloads of the articles in JDQS that were published by Emerald Publishing. Heading the list is Han et al. (2020), an article that investigates the statistical and economic significance of the performance of 148 anomalies in the Korean market and finds that data mining explains a large portion of abnormal returns from anomalies, which was downloaded 7,543 times. Next is Cheong and Choi (2020), an article that surveys academic developments in the literature on green bonds, an important financial instrument in socially responsible investment, which was downloaded 1,414 times. Koo and Chae (2020), an article that examines the dividend month premium in the Korean stock market using data on KOSPI and KOSDAQ and finds positive abnormal returns in predicted dividend months follows, which was downloaded 500 times. Next is Thompson and Kim (2020), an article that shows the vital role of information asymmetry in the post-M&A performance-time until deal completion nexus, which was downloaded 284 times. The remaining seven publications have been downloaded between 66 and 280 times each.

A comparison of Tables 11 and 12 shows that the articles in Table 12 have been more visible than those in Table 11, although the articles in Table 11 are older than those in Table 12. Consistent with Norris et al. (2008), Lansingh and Carter (2009) and Bornmann et al. (2012), we can confirm that the publication by Emerald Publishing and the change in editorial and publishing policies have had a positive influence on visibility of the articles in JDQS.

7. Conclusion

This paper examines the historical evolution of JDQS between 2002 and 2020 based on a bibliometric analysis. We employ a performance analysis, a bibliographic analysis, a cluster analysis, a regression analysis and a comparison analysis to analyze JDQS's various perspectives using the patterns of citations, keywords and authors in JDQS's articles. These analyses led to several findings.

JDQS's yearly publications, citations, IFs and centrality indices increased in the early 2010s and then decreased in 2020. JDQS's most prolific authors and their affiliated institutions are Kook-Hyun Chang, Sun-Joong Yoon and Byung Jin Kang with 11 articles each. The most author-affiliated institutions are Soongsil University, with 30 publications, followed by Hankuk University of Foreign Studies, with 28 publications and Korea Advanced Institute of Science and Technology, with 22 publications.

JDQS's most cited article is Kang's (2009) “A Study on the Price Discovery in Korea Stock Index Markets: KODEX200, KOSPI200, and KOSPI200 Futures,” with 33 citations. Yun and Lee (2003) and Kwon et al. (2011) take second and third place with 28 and 27 citations, respectively. We also find that the authors of JDQS articles cite JDQS articles most often, with 432 citations, followed by authors published in Korean Journal of Financial Engineering with 115 citations, The Korean Journal of Financial Management with 100 citations and Korean Journal of Financial Studies with 96 citations.

Our keyword network analysis reveals that the main keywords investigated by JDQS authors are Behavioral finance, Implied volatility and Information asymmetry with six occurrences each, Price discovery with 16 occurrences, KOSPI200 futures with seven occurrences, Volatility with 10 occurrences and KOSPI200 options with 16 occurrences across five clusters. Based on the author network analysis, we find that the most prolific authors of JDQS articles are Sun-Joong Yoon and Byung Jin Kang, with 11 articles each; Youngsoo Choi, with seven articles; Yuen Jung Park, Uk Chang and Bong-Chan Kho, with five articles each and Tong Suk Kim, with four articles.

We also focus on the relationship between the articles' various characteristics and the number of citations. Using on a negative binomial regression model, we confirm that the statistically significant characteristics that are positively related with JDQS citations are Article age and Conference, and that Demeaned age squared and Nonacademic authors are negatively associated with JDQS citations. Finally, we compare the number of views of JDQS articles between 2008 and 2019 and the number of downloads of JDQS articles published by Emerald Publishing (since 2020) with changed editorial and publishing policies. While the most viewed JDQS article between 2008 and 2019 is Kim et al. (2011) “FDM Algorithm for Pricing of ELS with Exit-Probability” with 868 views, the most downloaded JDQS article since Emerald Publishing began publishing the journal is Han et al. (2020) “Market anomalies in the Korean stock market” with 7,543 downloads. We confirm that publication by Emerald Publishing and the change in editorial and publishing policies have had positive effects on JDQS articles' citations.

This study contributes to journals' editorial boards and the literature on bibliometrics in several ways. First, we clarify the impact of JDQS's publisher, articles' citations, JDQS's citation indices and the patterns of authors' and articles' attributes on the journal's citations. Our study helps JDQS's editorial board to manage editorial and publishing policies for the development of the journal. Second, we identify the effects of keywords in the JDQS's articles, which provides useful information to scholars who are interested in submitting their studies to JDQS. Third, we examine co-authorships in JDQS articles, which suggests a strategy for increase the number of researchers who may be interested in reading and contributing to JDQS. Finally, we identify a significant relationship between JDQS articles' attributes and the number of citations they receive. These results provide factors for JDQS articles' authors to consider to increase citations of their articles, including presenting their work at conferences and avoiding collaboration with nonacademic authors.

Our study has several limitations. One is that our empirical analyses stem from data on the citations in domestic journals. Since Emerald Publishing has only recently started to publish the articles in JDQS, and the editorial and publishing policies to support citations from international journals have only recently been implemented, the data on the citations are not sufficient to compare the relationship between the articles' attributes and the citations from domestic and international journals. Another limitation is that the analysis of the relationship between the articles' attributes and their citations does not consider environmental factors. For example, JDQS articles that were published during the financial crisis can be affected by conditions in the stock and derivative markets. Considering these limitations is left to future research.

Figures

Keyword-level network

Figure 1

Keyword-level network

Author-level network

Figure 2

Author-level network

JDQS's annual publications and citations between 2002 and 2020

YearTPCTPTCPTCTC(SE)TC/TPTC/TCPTC(SE)/TPTC(SE)/TCPh
200210101067606.706.706.006.005
200311211082737.458.206.647.305
200412331181686.757.365.676.185
20051144973586.648.115.276.444
20061054863436.307.884.305.384
200710641095799.509.507.907.906
2008973959406.566.564.444.445
20091487131419410.0710.856.717.237
201012991265505.425.424.174.174
201116115151531139.5610.207.067.538
2012161311590595.636.003.693.936
2013161471685435.315.312.692.696
20142717422106683.934.822.523.096
2015231972290503.914.092.172.276
2016232202068372.963.401.611.855
2017212411649212.333.061.001.314
2018172581227141.592.250.821.173
201916274101791.061.700.560.902
2020162902550.312.500.312.502

Note(s): The table reports JDQS's annual publications and citations between 2002 and 2020. TP indicates total publications. CTP indicates cumulative total of publications. TCP indicates total cited publications. TC(TC(SE)) indicates total citations (excluding self-citation). TC/TP(TC(SE)/TP) indicates citations (excluding self-citation) per publication. TC/TCP(TC(SE)/TCP) indicates citations (excluding self-citation) per cited publication. h indicates h-index

JDQS's annual citation indices between 2008 and 2019

YearKCI-IF (2 years)KCI-IF (2 years, SE)KCI-IF (5 years)Centrality index (3 years)
20080.750.650.65
20090.890.790.65
20101.131.040.7
20110.770.580.91
20120.860.610.892.972
20131.341.031.074.17
20141.590.811.355.198
20150.910.490.932.118
20160.560.30.71.199
20171.040.570.792.473
20180.910.450.711.391
20190.660.180.60.798

Note(s): The table reports JDQS's annual citation indices between 2008 and 2019. KCI-IF(2 years) (KCI-IF (2 years, SE)) indicates a mean number of citation (excluding self-citation) of publication in JDQS cited in other paper during recent two years. KCI-IF (5 years) indicates a mean number of citation of publication in JDQS cited in other paper during recent five years. Centrality index (3 years) indicates the citation index calculated based on number of types of journal citing JDQS and reputation during recent three years

The most prolific JDQS authors between 2002 and 2020

AuthorInstitutionTPTCPTCTC/TPTC/TCPh
Chang, Kook-HyunKonkuk University119696.277.675
Yoon, Sun-JoongDongguk University1110676.096.705
Kang, Byung JinSoongsil University1110605.456.005
Kim, SolHankuk University of Foreign Studies98869.5610.755
Lee, Woo-BaikKorea National Open University99455.005.004
Rhee, Joon HeeSoongsil University97171.892.432
Choi, YoungsooHankuk University of Foreign Studies77415.865.863
Lee, Jae HaSungkyunkwan University666611.0011.004
Park, Yuen JungHallym University65274.505.404
Eom, Young HoYonsei University66203.333.333
Jang, Woon WookYonsei University66152.502.503

Note(s): The table reports the most prolific JDQS authors between 2002 and 2020. All variable definitions are identical to those in Table 1

The most JDQS author-affiliated institutions between 2002 and 2020

InstitutionTPTCPTCTC/TPTC/TCPh
Soongsil University3023792.633.434
Hankuk University of Foreign Studies28231716.117.438
Korea Advanced Institute of Science and Technology22201185.365.907
Hanyang University2118844.004.676
Konkuk University19171337.007.827
Pusan National University1815995.506.606
Seoul National University1611825.137.456
Dongguk University1310503.855.004
Korea National Open University1010464.604.604
Seoul Women's University98758.339.386
National Pension Research Institute98616.787.634
Yonsei University99273.003.003

Note(s): The table reports the most JDQS author-affiliated institutions between 2002 and 2020. All variable definitions are identical to those in Table 1

The 20 most cited JDQS articles between 2002 and 2020

AuthorsTitleYearTCC/Y
Kang, Seok KyuA Study on the Price Discovery in Korea Stock Index Markets: KODEX200, KOSPI200 and KOSPI200 Futures2009333.00
Yun, Chang Hyun., Lee, Sung KooThe Impact of Trading Volumes by Trader Types in the KOSPI200 Futures Market2003281.65
Kwon, Taek Ho, Park, Rae Soo
Chang, Uk
Derivatives Use, Firm Value, Risk and Determinants: Evidence of Korean Firms2011273.00
Lee, Jae Ha, Hahn, Deok HeeLead-Lag Relationship between Return and Volume in the KOSPI200 Spot and Option Markets2007262.00
Kim, Hong Bae, Kang, Sang HoonPrice Discovery and Transmission Mechanism between CDS and FX markets2011262.89
Yoo, Shiyong, Koh, Jung YangA Research on Enhancing Forecasting Power for the Realized Volatility of KOSPI2002009252.27
Kim, SolInformation Contents of Call-Put Options Trading Value Ratio2007231.77
Oh, Se KyungIntraday Volatility in the Korean Stock Index and Korean Stock Index Futures Markets2002221.22
Chung, Jay M., Kim, Jae KeunThe KOSPI200 Index Option Trading Behavior and Performance of Individual Investors2005221.47
Kho, Bong Chan, Chang, Uk
Choi, Youngsoo
Style Analysis and Its Application of Domestic Mutual Funds2011212.33
Cho, DamThe Effects of Estimation Methods of Stock Price Volatility on VaR2004201.25
Kho, Bong-Chan, Kim, Jin-WooTrading Performance of Domestic and Foreign Investors in KOSPI200 Index Futures Markets2005201.33
Lee, Joon HaengEstimating and Forecasting the Term Structure of Korea Markets Using Nelson-Siegel Model2004201.25
Kim, SolWhich one is more important factor for pricing options, skewness or kurtosis?2006191.36
Bae, Kwangil, Kang, Hankil
Lee, Changjun
The Lead-lag Relationship between the Stock Market and CDS Market in Korea2010191.90
Kim, SolSkewness or Kurtosis?: Using Corrado and Su (1996)'s Model2008191.58
Lee, Woo-BaikAn empirical analysis on change in price discovery of KOSPI200 futures through market maturity process2006171.21
Moon, Gyu-Hyun, Hong, Chung-HyoRisk Management with KOSDAQ50 Index Futures Markets2003160.94
Chang, Kook-Hyun, Yoon, Byung-JoCDS Premium and Jump Risk in Stock Market2012162.00
Nam, Kyung-Tae, Cho, HoonEmpirical Study of Volume and Volatility Effects Associated with ELS and ELW Issuance2009161.45

Note(s): The table reports the 20 most cited JDQS articles between 2002 and 2020. Year indicates publication year. TC indicates total citations. C/Y indicates citations per year

The top 10 journals citing JDQS articles until 2019

JournalNOCRanking (KCI-IF(2019, 2 years))Subject field(KCI)
Journal of Derivatives and Quantitative Studies43259/84Business management
Korean Journal of Financial Engineering11557/84Business management
The Korean Journal of Financial Management10035/84Business management
Korean Journal of Financial Studies9625/84Business management
Asian Review of Financial Research8130/84Business management
Journal of Knowledge Studies4945/64Economics
Journal of Industrial Economics and Business489/64Economics
Korean Journal of Business Administration348/84Business management
Journal of The Korean Data Analysis Society331/6Statistics
Journal of Money and Finance2818/64Business management

Note(s): The table reports the top 10 journals citing JDQS articles until 2019. NOC indicates the number of citations in a given journal citing JDQS articles. Ranking (KCI-IF(2019, 2 years)) indicates the ranking based on the impact factor calculated from the citations during recent two years in 2019. Subject field (KCI) indicates the category including the journal defined in Korea Citation Index (KCI)

The top 10 journals citing JDQS articles by four-year period

2008–20112012–20152016–2019
Journal of Derivatives and Quantitative Studies (121)Journal of Derivatives and Quantitative Studies (151)Journal of Derivatives and Quantitative Studies (80)
Korean Journal of Financial Engineering (35)Korean Journal of Financial Studies (34)Korean Journal of Financial Engineering (12)
The Korean Journal of Financial Management (31)The Korean Journal of Financial Management (34)The Korean Journal of Financial Management (10)
Asian Review of Financial Research (26)Korean Journal of Financial Engineering (25)Journal of Knowledge Studies (8)
Korean Journal of Financial Studies (23)Journal of Knowledge Studies (11)Korean Journal of Financial Studies (8)
Journal of Knowledge Studies (11)Asian Review of Financial Research (10)Asian Review of Financial Research (6)
Journal of Industrial Economics and Business (9)Korean management review (7)Journal of Tourism Management Research (3)
Journal of Money and Finance (8)Journal of Industrial Economics and Business (6)Asia Pacific Journal of Business (2)
Journal of The Korean Data Analysis Society (7)Korean Journal of Business Administration (6)Journal of Industrial Economics and Business (2)
The Journal of International Trade and Commerce (7)Management and Information Systems Review (5)Journal of The Korean Data Analysis Society, Korean Business Education Review, Korean Corporation Management Review, Korean Journal of Business Administration, Review of Financial Information Studies, The Journal of Eurasian Studies (2)

Note(s): The table reports the top 10 journals citing JDQS articles by 4-year period. The number of citations in a given journal citing articles in JDQS is reported in parentheses

Variable description and summary statistics

VariableDescriptionTypeExpected signMaxMinMeanStd.Dev.
Dependent variable
Total citationsTotal number of citations received by an article since its publicationCount*33.000.004.885.79
Control variables
Article ageTotal number of years since an article's publicationCount±19.001.008.735.18
Demeaned age squaredThe square of the difference between an article's age and the mean of the ages of all the articlesContinuous±105.450.0726.7827.85
Universalist variables
Article lengthTotal number of pages in an articleCount+70.0011.0028.137.32
Article orderThe number at which an article appears in the issueCount7.001.002.971.53
Lead article1 if an article is a lead article in the issue, otherwise 0Dummy+1.000.000.210.41
Funding1 if an article receives funding, otherwise 0Dummy+1.000.000.570.50
Conference1 if an article is presented in a conference before publication, otherwise 0Dummy+1.000.000.140.35
KCI1 if an article is published in the journal indexed in KCI, otherwise 0Dummy+1.000.000.890.32
Social constructivist variables
Number of authorsTotal number of authors involved in the articleCount+6.001.001.940.83
Foreign authors1 if an article has an foreign author, otherwise 0Dummy+1.000.000.020.13
Foreign institutions1 if an article as a foreign institutional author, otherwise 0Dummy+1.000.000.030.16
Nonacademic authors1 if an article as a nonacademic author, otherwise 0Dummy±1.000.000.250.43
Number of referencesTotal number of documents cited by the articleCount+131.004.0029.1415.07
Presentation variables
Length of titleTotal number words in a title of an articleCount±24.004.0011.203.63
Number of keywordsTotal number of keywords in an articleCount+9.002.004.760.93
Language1 if an article is written in English, otherwise 0Dummy±1.000.000.120.32

Note(s): The table describe variables and reports summary statistics of variables. The sample period is from 2002 through 2020

Correlation among the model's variables

No.Variable1234567891011121314151617
1Total citations1
2Article age0.3851
3Demeaned age squared−0.0240.3931
4Article length−0.043−0.105*−0.0541
5Article order−0.0650.0290.022−0.1251
6Lead article0.048−0.009−0.0160.154−0.6701
7Funding0.092−0.0290.0050.0440.014−0.0081
8Conference0.1630.0740.003−0.022−0.0750.0240.0591
9KCI−0.130−0.638−0.7560.103*−0.0780.028−0.002−0.0381
10Number of authors−0.053−0.115*0.0340.010−0.0370.0490.0280.0660.0121
11Foreign authors−0.085−0.1570.077−0.093−0.084−0.0050.007−0.0550.0480.1381
12Foreign institutions−0.117−0.109*0.101*−0.058−0.107*0.015−0.110*−0.010−0.0060.1400.3011
13Nonacademic authors−0.1240.0470.0670.1200.069−0.012−0.189−0.058−0.0420.159−0.077−0.0011
14Number of references−0.028−0.228−0.0710.484−0.1380.0720.056−0.0420.1450.038−0.019−0.059−0.0501
15Length of title0.0880.043−0.0750.071−0.0490.099*−0.042−0.0410.052−0.0170.0220.003−0.005−0.0061
16Number of keywords−0.088−0.218−0.1400.098*−0.0030.0160.071−0.0530.1190.008−0.0230.0430.0460.0460.0011
17Language−0.228−0.2110.102−0.130−0.0280.019−0.032−0.1200.029−0.0120.2810.200−0.063−0.019−0.1290.0131

Note(s): The table reports the correlation among the model's variables. *, † and ‡ represent significance at the 10%, 5% and 1% levels, respectively

Regression results

VariablesModel IModel II
Coeff.Std.Err.Coeff.Std.Err.
Constant1.488(0.612)**0.517(3.700)
Article age0.520(0.065)***0.506(0.084)***
Demeaned age squared−0.043(0.012)***−0.030(0.018)*
Article length −0.044(0.050)
Article order −0.169(0.276)
Lead article 0.234(1.019)
Funding 0.859(0.637)
Conference 1.763(0.883)**
KCI 0.747(1.802)
Number of authors 0.055(0.385)
Foreign authors 1.108(2.587)
Foreign institutions −1.184(2.019)
Nonacademic authors −1.419(0.746)*
Number of references 0.027(0.024)
Length of title 0.077(0.086)
Number of keywords −0.025(0.341)
Language −2.008(1.048)*
N290 290
AIC6.162 6.180
Log-likelihood−890.502 −879.116

Note(s): The table reports the regression results. *, ** and *** represent significance at the 10%, 5% and 1% levels, respectively. Akaike Information Criterion is abbreviated to AIC

The 10 most viewed JDQS articles between 2008 and 2019

AuthorsTitleYearNumber of views
Kim, Yongsik, Bae, Hyeong-Ohk
Roh, Hyunseok
FDM Algorithm for Pricing of ELS with Exit-Probability2011868
Ohk, Ki YoolThe Effect of Futures Trading on Spot Market Liquidity2005542
Kim, Soo-Hyun, Lee, Kyuseok, Kang, Hyoung-GooLeveraged/Inverse ETFs and Volatility in the Korean Market2015501
Lee, Su Jin, Cho, Jin Wan
Lee, Jae Hyun
Analysis on the Risk Return Profile of Alternative Assets Under Reference Portfolio Concept2019478
Yoon, Bo Hyun, Choi, Young MinA Study on Alternative Index Strategies in Korean Stock Market2014466
Yoo, Jin, Kim, Geun BeomTheory and Evidence of Arbitrage Trading of Equity Futures2010423
Lee, Joon HaengEstimating and Forecasting the Term Structure of Korea Markets Using Nelson-Siegel Model2004418
Yang, Jeong Phil, Chang, Uk
Choi, Youngsoo
The Issues and Improvement Plans of Pricing and Accounting of the Structured Derivatives: The Case of Zero-Coupon Callable Bond2018411
Song, JoonhyukEstimating and Forecasting a Term Structure of Interest Rates with State-Space Nelson-Siegel Model2011402
Lim, Hyuncheul, Choi, YoungsooKnock-In and Stocks Market Effect Due to ELS Issuance and Hedging2015386

Note(s): The table reports the 10 most viewed JDQS articles between 2008 and 2019. Year indicates publication year

Downloads of JDQS articles published by Emerald Publishing

AuthorsTitleNumber of downloads
Han, Minyeon, Lee, Dong-Hyun
Kang, Hyoung-Goo
Market anomalies in the Korean stock market7,543
Cheong, Chiyoung, Choi, JaewonGreen bonds: a survey1,414
Koo, Bonha, Chae, JoonDividend month premium in the Korean stock market500
Thompson, Ephraim Kwashie
Kim, Changki
Information asymmetry, time until deal completion and post-M&A performance284
Kang, Dae Jin, Kim, Soo-HyunCAPM verification using overnight and daytime returns280
Kang, Hyoung-Goo, Han, ByungsukAn option embedded novel military service system based on cognitive bias theories271
Chung, Jay M., Wang, Shu-FengShort selling and stock price crash risk251
Kim, Jungmu, Park, Yuen JungContagion between liquid and illiquid assets during the financial crisis: evidence from the US credit derivative market214
Yang, Tun-Ya, Huang, Si-Yuan
Tsai, Wei-Che, Weng, Pei-Shih
The impacts of day trading activity on market quality: evidence from the policy change on the Taiwan stock market200
Kim. RyoonheeDo firm boundaries matter? The impact of Chinese imports on US conglomerates141
Lee, HyoseobThe necessity to activate long-term ETD in Korea66

Note(s): The table reports the number of downloads of JDQS articles published by Emerald Publishing. Emerald Publishing starts to publish the articles in JDQS from 2020 (Vol. 28, No. 2)

Notes

1.

KDA has held the international Asia–Pacific Association of Derivatives (APAD) conference since 2004. The Journal of Futures Markets and JDQS published a special issue comprised of selected papers presented at APAD. The most recent APAD conference, the 17th, was held July 12–13, 2021, in Busan, Korea, under the sponsorship of the Korea Exchange, Korea Investment and Securities, Mirae Asset Global Investments, Shinhan Investment, NH Investment and Securities, Korea Financial Investment Association, KB Financial Group, Mirae Asset Securities, Korea Investment Management, KB Securities, Samsung Asset Management, Korea Securities Depository, KIWOOM, Shinhan Asset Management, Hanwha Asset Management, SK Securities, FnGuide, and Samsung Life Insurance. The keynote speaker was K. Geert Rouwenhorst, who is affiliated with Yale University and presented the topic “The Commodity Futures Risk Premium.”

2.

While JDQS was first published in 1993, the data on JDQS article's citations is available only from 2002.

4.

The data on the number of downloads for recently published articles is as of the end of June, 2021.

5.

VOSviewer is developed by van Eck and Waltman (2010) with the algorithms to construct and view bibliometric maps.

6.

h-index is an author-level metric defined as the maximum value of h, such that an author has published at least h publications that have each been cited at least h times.

8.

For example, Social Science is classified into Social Science in general, Political Science, Economics, Agricultural Economics, Business Management, Accounting, International Trade, Sociology, Social Welfare, Area Studies, Anthropology, Education, Law, Public Administration, Public Policy, Geography, International/Regional Development, Tourism, Journalism and Broadcasting, Military Science, Psychological Science, and Other Social Science.

9.

Some keywords were unified. For example, “KOSPI 200 index options” and “KOSPI200 index option” are changed to “KOSPI200 options.”

10.

A detailed explanation for the KCI's evaluation of academic journals is available at https://www.kci.go.kr/kciportal/guidance/jourEvalGuidance.kci?locale=en

11.

Alamri (2018) concludes that, while a number of factors may contribute to the number of citations an article receives, indexing plays an important role since indexing of journals in a database allows journals' articles to be easily searchable by scholars and increases journals' visibility.

12.

Stremersch and Verhoef (2005) show that articles that have foreign scholars are cited less often than those that have US-based authors. The authors reason that foreign authors may have disadvantages in visibility since the majority of the finance field is based in US. Following their idea, the finance academia in Korea is even less developed than it is in other nations, so we use Foreign authors as an independent variable in our model.

13.

Dang and Li (2020) and Valtakoski (2020) also employ Length of title in their regression model.

14.

Lansingh and Carter (2009) show that the average number of citations of articles written in English is larger than that of articles written in other languages. Bornmann et al. (2012) find that, since English is the lingua franca in all fields of science, the papers published in English have an advantage over those published in other languages. Following those authors, we use Language in our regression model.

15.

Norris et al. (2008) provide empirical evidence of a citation advantage of open-access articles over toll-access articles in ecology, applied mathematics, sociology, and economics.

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Acknowledgements

Funding: This work was supported by Hankuk University of Foreign Studies Research Fund.

Corresponding author

Jun Sik Kim can be contacted at: junsici@inu.ac.kr

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