Leveraging Predictive Financial Modeling and Comparative Research for Economic Forecasting: Insights from India’s Payment Systems

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Abstract

This paper examines the transformative role of India’s Unified Payments Interface (UPI) in driving the shift to a cashless economy, with a particular focus on its implications for financial market forecasting and investment strategies. Using the Continuous Exponential Mohammad Asad (CEMA) model, the study researches transaction patterns within the UPI ecosystem, revealing that UPI’s annual transaction volume could surpass the GDP of several major economies. The paper also introduces the identification of key UPI clusters, offering novel insights into future growth. By applying advanced machine learning and predictive financial modeling, the study provides a unique approach to forecasting financial trends and market dynamics. While not focused on traditional corporate finance or portfolio management, it presents a practical tool for market trend forecasting, risk management, and investment decision-making. The research is highly valuable for the financial community, with broad implications for emerging economies and global markets. Bridging innovative research with practical applications, the study presents a unique case of modeling digital financial infrastructures and offers critical insights into the stability and scalability of digital payment systems, making it highly relevant for policymakers and regulators.

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