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Operational research and artificial intelligence methods in banking
Authors
M Doumpos
D Gounopoulos
+3 more
E Platanakis
W Zhang
C Zopounidis
Publication date
28 April 2022
Publisher
Elsevier
Doi
Abstract
Supplementary materials are available online at https://www.sciencedirect.com/science/article/pii/S037722172200337X?via%3Dihub#sec0031 .Copyright © 2022 The Authors. Banking is a popular topic for empirical and methodological research that applies operational research (OR) and artificial intelligence (AI) methods. This article provides a comprehensive and structured bibliographic survey of OR- and AI-based research devoted to the banking industry over the last decade. The article reviews the main topics of this research, including bank efficiency, risk assessment, bank performance, mergers and acquisitions, banking regulation, customer-related studies, and fintech in the banking industry. The survey results provide comprehensive insights into the contributions of OR and AI methods to banking. Finally, we propose several research directions for future studies that include emerging topics and methods based on the survey results
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Brunel University Research Archive
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Last time updated on 05/10/2023