Title: A bibliometric analysis on the application of deep learning in economics, econometrics, and finance
Authors: Arash Salehpour; Karim Samadzamini
Addresses: Department of Computer Engineering, Rasht Branch, Islamic Azad University, Rasht, Gilan, Iran ' Department of Computer Engineering, University College of Nabi Akram, Tabriz, Iran
Abstract: This research looked at the deep learning applications in economics, econometrics, and finance. Two hundred fifty articles from the Scopus database's index of journals published between 2013 and 2022 were gathered using a bibliometric technique. The data was analysed using many programs (R studio, Excel, and Biblioshiny), and in terms of countries, organisations, publications, papers, and authors, the most prominent scientific players were highlighted. Our research found that as of 2019, the quantity of publications has increased. The literature analysis received the most contributions from China and the USA. The most significant findings and discussions came from the following analyses: estimation of share prices, asset management price fluctuations and liquidity, forecast of bankruptcies, evaluation of credit risk, risk assessment, commodity prices top trend analysis, citation analysis, thematic evolution, and thematic map. Our findings offer practical recommendations on how deep learning may be implemented into decision-making processes for market participants, particularly those working in fintech and finance.
Keywords: deep learning; bibliometric; economics; econometrics; finance.
DOI: 10.1504/IJCSE.2024.137286
International Journal of Computational Science and Engineering, 2024 Vol.27 No.2, pp.167 - 181
Received: 29 Sep 2022
Received in revised form: 21 Dec 2022
Accepted: 23 Dec 2022
Published online: 11 Mar 2024 *