Authors: Nomsa Zulu
Abstract: Machine learning has emerged as a powerful tool for analyzing financial data, enabling more accurate predictions, efficient risk management, and data-driven decision-making. Financial datasets are typically large, complex, and dynamic, consisting of time-series data, transactional records, and market indicators. This study explores various machine learning approaches, including supervised learning, unsupervised learning, and deep learning techniques, applied to financial data analysis. It highlights key applications such as stock price prediction, credit risk assessment, fraud detection, portfolio optimization, and algorithmic trading. The paper also examines the role of feature engineering, data preprocessing, and model evaluation in improving prediction accuracy. Additionally, challenges such as data volatility, overfitting, model interpretability, and regulatory compliance are discussed, along with potential solutions such as ensemble methods, explainable AI, and robust validation techniques. The findings demonstrate that machine learning significantly enhances the ability to extract meaningful insights from financial data, supporting more informed and strategic decision-making in the financial sector.
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