AI-Driven Predictive Analytics for Financial Market Forecasting

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Dr. Emily Kour

Abstract

This paper explores the application of artificial intelligence (AI) and machine learning (ML) techniques in predicting financial market trends. By employing advanced algorithms such as deep learning and reinforcement learning, the study evaluates their effectiveness in enhancing forecasting accuracy compared to traditional methods. The research integrates real-time market data with AI-driven models to identify patterns and predict price movements, providing actionable insights for investors and financial analysts.

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References

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