The Integration of Machine Learning in Central Banks: Implications and Innovations

Authors

  • Dumitru Alexandru BODISLAV Bucharest University of Economic Studies, Bucharest, Romania,
  • Florina BRAN Bucharest University of Economic Studies, Bucharest, Romania,
  • Irina Elena PETRESCU Bucharest University of Economic Studies, Bucharest, Romania,
  • Cristina Carol GOMBOȘ Bucharest University of Economic Studies, Bucharest, Romania,

DOI:

https://doi.org/10.14207/ejsd.2024.v13n4p23

Keywords:

artificial intelligence, trend, economic cycles, resilience

Abstract

The effectiveness of using artificial intelligence (AI) techniques to lessen the negative effects of economic cycles is examined in this study article. Economic cycles, which are defined by variations in the level of economic activity, present important difficulties for decision-makers in government, business, and society at large. This research investigates many approaches to reducing economic cycles, such as forecasting, policy creation, and adaptive decision-making, by utilizing AI, namely machine learning algorithms. The first section of the paper reviews the body of research on economic cycles and how artificial intelligence might be used to address them. After that, it explores certain AI methods including neural networks, time series analysis, and natural language processing, explaining how they might be used for risk management and economic forecasting. Additionally, the study investigates AI-driven policy interventions, examining how machine learning algorithms might be used to optimize monetary and fiscal policies in order to sustain growth and prevent economic downturns. The study also addresses the difficulties and constraints that come with using AI technologies in economic management, such as problems with algorithmic biases, data quality, and legal considerations. It highlights how crucial interdisciplinary cooperation and openness are to creating AI-driven solutions that are reliable, moral, and socially conscious. This research paper offers insights into the possible advantages and disadvantages of employing AI tools for damping economic cycles through empirical analysis and case studies. In order to fully realize AI's promise in fostering resilience and stability in the economy, it ends by presenting future research areas and policy suggestions.

 

 

Keywords: artificial intelligence, trend, economic cycles, resilience

 

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Published

2024-10-01

How to Cite

Alexandru BODISLAV, D. ., BRAN, F. ., Elena PETRESCU, I. ., & Carol GOMBOȘ, C. . (2024). The Integration of Machine Learning in Central Banks: Implications and Innovations. European Journal of Sustainable Development, 13(4), 23. https://doi.org/10.14207/ejsd.2024.v13n4p23

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Section

Articles