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The role of artificial intelligence as a stimulus in the global and Russian economy development

Authors: Daibage D.S., Polikovskiy T.A.
Published in issue: #11(88)/2023
DOI: 10.18698/2541-8009-2023-11-947


Category: Humanities | Chapter: Social sciences

Keywords: digitalization, scientometrics, scientific studies, artificial intelligence, neural networks, machine learning, databases, digital economy, scientific potential
Published: 19.12.2023

The paper analyzes domestic and foreign literature sources devoted to the impact of artificial intelligence on the global and Russian economy based on queries to the Google Scholar scientometric database for the 2018–2022. The literature sources were selected using the most frequently appearing keywords: neural networks, machine learning and economics. In order to identify development dynamics in this area in the Russian-speaking segment, a sample formed using similar queries in Russian was studied. Steady increase in the number of documents in regard to applying artificial intelligence in the economics was found, which was explained by the topic relevance making it possible to predict further increase in the number of works in this area. The analysis results provide understanding of the current trends in the area under consideration within the scientific community.


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