Mapping the Intellectual Structure of Artificial Neural Network Research in Business Domain: A Retrospective Overview Using Bibliometric Review
Exploring the Latest Trends in Management Literature
ISBN: 978-1-80262-358-1, eISBN: 978-1-80262-357-4
Publication date: 14 November 2022
Abstract
Artificial neural networks (ANNs), which represent computational models simulating the biological neural systems, have become a dominant paradigm for solving complex analytical problems. ANN applications have been employed in various disciplines such as psychology, computer science, mathematics, engineering, medicine, manufacturing, and business studies. Academic research on ANNs is witnessing considerable publication activity, and there exists a need to track the intellectual structure of the existing research for a better comprehension of the domain. The current study uses a bibliometric approach to ANN business literature extracted from the Web of Science database. The study also performs a chronological review using science mapping and examines the evolution trajectory to determine research areas relevant to future research. The authors suggest that researchers focus on ANN deep learning models as the bibliometric results predict an expeditious growth of the research topic in the upcoming years. The findings reveal that business research on ANNs is flourishing and suggest further work on domains, such as back-propagation neural networks, support vector machines, and predictive modeling. By providing a systematic and dynamic understanding of ANN business research, the current study enhances the readers' understanding of existing reviews and complements the domain knowledge.
Keywords
Citation
Perannagari, K.T. and Gupta, S. (2022), "Mapping the Intellectual Structure of Artificial Neural Network Research in Business Domain: A Retrospective Overview Using Bibliometric Review", Rana, S., Sakshi and Singh, J. (Ed.) Exploring the Latest Trends in Management Literature (Review of Management Literature, Vol. 1), Emerald Publishing Limited, Leeds, pp. 35-59. https://doi.org/10.1108/S2754-586520220000001003
Publisher
:Emerald Publishing Limited
Copyright © 2023 Krishna Teja Perannagari and Shaphali Gupta. Published under exclusive licence by Emerald Publishing Limited