Uncovering the Dynamics in the Application of Machine learning in Computational Finance: A Bibliometric and Social Network Analysis

Samuel-Soma M. Ajibade, Muhammed Basheer Jasser, D. O. Alebiosu, Ismail Ahmad Al-Qasem Al-Hadi, G. Al-Dharhani, Farrukh Hassan, B. Gyamfi
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Abstract

This paper examined the research landscape on the applications of machine learning in finance (MLF) research based on the published documents on the topic indexed in the Scopus database from 2007 to 2021. Consequently, the publication trends on the published documents data were examined to determine the most prolific authors, institutions, countries, and funding bodies on the topic. Next, bibliometric analysis (BA) was employed to analyse and map co-authorship networks, keywords occurrences, and citations. Lastly, a systematic literature review was carried out to examine the scientific and technological developments in the field. The results showed that the number of published documents on MLF research has soared tremendously from 5 to 398 between 2007 and 2021, which signifies an enormous increase (~7,900%) in the subject area. The high productivity is partly ascribed to the research activities of the most research-active academic stakeholders namely Chihfong Tsai (National Central University in Taiwan) and Stanford University (United States). However, the National Natural Science Foundation of China (NSFC) is the most active funder in the United States and has the largest number of published documents. BA analysis revealed high collaboration rates, published documents, and citations among the stakeholders. Keywords occurrence analysis revealed that MLF research is a highly inter- and multidisciplinary area with numerous hotspots and themes ranging from systems, algorithms and techniques to the security and crime prevention in Finance using ML. Citation analysis, the most prominent (and by extension the most prestigious) source titles on MLF are IEEE Access, Expert Systems with Applications and ACM International Conference Proceedings Series (ACM-ICPS). The systematic literature review revealed the various areas and applications of MLF research, particularly in the areas of predictive/forecasting analytics, credit assessment and management, as well as supply chain, carbon trading, neural networks, and artificial intelligence, among others. It is expected that MLF research activities and their impact on the wider global society will continue to increase in the coming years
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揭示机器学习在计算金融领域的应用动态:文献计量与社交网络分析
本文根据 Scopus 数据库收录的 2007 年至 2021 年有关该主题的已发表文献,研究了机器学习在金融(MLF)研究中的应用。因此,本文对已发表文献数据的发表趋势进行了研究,以确定该主题最多产的作者、机构、国家和资助机构。接着,采用文献计量分析法(BA)对合著网络、关键词出现率和引文进行分析和绘制。最后,进行了系统的文献综述,以研究该领域的科技发展情况。结果表明,2007 年至 2021 年间,有关 MLF 研究的发表文献数量从 5 篇猛增至 398 篇,这意味着该学科领域的文献数量大幅增加(约 7,900% )。高生产率部分归功于研究最活跃的学术利益相关者的研究活动,即台湾国立中央大学的蔡其峰和美国斯坦福大学。不过,中国国家自然科学基金委员会(NSFC)是美国最活跃的资助方,发表的文献数量也最多。BA 分析显示,利益相关者之间的合作率、发表的文献和引用率都很高。关键词出现分析表明,MLF 研究是一个高度跨学科和多学科的领域,从系统、算法和技术到使用 ML 的金融安全和犯罪预防,存在众多热点和主题。从引文分析来看,有关 MLF 的最重要(也是最有声望的)来源期刊是 IEEE Access、Expert Systems with Applications 和 ACM International Conference Proceedings Series (ACM-ICPS)。系统的文献综述揭示了 MLF 研究的各个领域和应用,特别是在预测/预报分析、信用评估和管理,以及供应链、碳交易、神经网络和人工智能等领域。预计未来几年,多边基金研究活动及其对全球社会的影响将继续增加
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期刊介绍: International Journal of Economics and Financial Issues (IJEFI) is the international academic journal, and is a double-blind, peer-reviewed academic journal publishing high quality conceptual and measure development articles in the areas of economics, finance and related disciplines. The journal has a worldwide audience. The journal''s goal is to stimulate the development of economics, finance and related disciplines theory worldwide by publishing interesting articles in a highly readable format. The journal is published Bimonthly (6 issues per year) and covers a wide variety of topics including (but not limited to): Macroeconomcis International Economics Econometrics Business Economics Growth and Development Regional Economics Tourism Economics International Trade Finance International Finance Macroeconomic Aspects of Finance General Financial Markets Financial Institutions Behavioral Finance Public Finance Asset Pricing Financial Management Options and Futures Taxation, Subsidies and Revenue Corporate Finance and Governance Money and Banking Markets and Institutions of Emerging Markets Public Economics and Public Policy Financial Economics Applied Financial Econometrics Financial Risk Analysis Risk Management Portfolio Management Financial Econometrics.
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