ISSN 3060-4745 Open Access · Peer Reviewed
PDF
DOI

Keywords

Econometric Analysis

How to Cite

ECONOMETRIC ANALYSIS AND FORECASTING OF FDI INFLOWS USING NEURAL NETWORKS (AI). (2025). ACUMEN: INTERNATIONAL JOURNAL OF MULTIDISCIPLINARY RESEARCH, 2(5), 11-17. https://www.universalpublishings.com/index.php/aijmr/article/view/11524

Abstract

This article presents a comprehensive econometric analysis and forecasting of Foreign Direct Investment (FDI) inflows using artificial intelligence (AI) techniques, specifically focusing on the application of neural networks. As global investment patterns become more complex, traditional econometric models often fall short in capturing nonlinear relationships and predicting future trends. By leveraging machine learning algorithms, this study addresses these challenges, offering a more robust and dynamic method for forecasting FDI. The research utilizes historical data, macroeconomic indicators, and country-specific variables to train neural networks, aiming to enhance the precision of FDI inflow predictions. The results demonstrate the superior performance of AI-driven models in capturing the underlying trends of investment flows compared to conventional econometric models. The findings suggest that AI and machine learning can significantly improve investment decision-making processes, making it easier for governments, policymakers, and businesses to plan and adapt to changing global investment environments. The study concludes by emphasizing the importance of integrating AI technologies into economic forecasting and highlights their potential to transform FDI analysis and policy development in emerging and developed economies alike

PDF
DOI

References

Dunning, J. H. (1980). Toward an eclectic theory of international production: Some empirical tests. Journal of International Business Studies, 11(1), 9-31.

UNCTAD. (2020). World Investment Report 2020: International Production Beyond the Pandemic. United Nations Conference on Trade and Development. Retrieved from https://unctad.org/webflyer/world-investment-report-2020

World Bank. (2021). World Development Indicators. World Bank Group. Retrieved from https://data.worldbank.org/indicator

FDI Intelligence. (2021). Global FDI Trends and Forecasts. Financial Times. Retrieved from https://www.fdiintelligence.com

Zhang, H., & Wang, X. (2019). Forecasting FDI inflows using machine learning techniques. International Business

https://doi.org/10.1016/j.ibusrev.2018.10.006 Review, 28(2), 453-463.

LeCun, Y., Bengio, Y., & Hinton, G. (2015). Deep learning. Nature, 521(7553), 436 444. https://doi.org/10.1038/nature14539

Bishop, C. M. (2006). Pattern Recognition and Machine Learning. Springer.

Salas, C., & Sweeney, M. (2018). Predicting FDI flows using neural networks: An econometric approach. Journal of Economic Forecasting, 42(3), 244-267. https://doi.org/10.1016/j.jeconforecast.2017.10.004 Ascent. International Monetary Fund (IMF). (2020). World Economic Outlook: A Long and Difficult International Monetary https://www.imf.org/en/Publications/WEO Fund. Retrieved from

Zhang, S. (2017). The role of artificial intelligence in predicting investment trends. Journal of AI and Economics, 10(1), 13-25.

Creative Commons License

This work is licensed under a Creative Commons Attribution 4.0 International License.

Indexed In · Partners

Trusted by Global Scientific Indexing Services

JUSR is indexed and recognized by leading international databases and research integrity organizations.