Rethinking Role of Traditional vs. Advanced Stock Price Forecasting Models: A Critical Literature Review
DOI:
https://doi.org/10.70301/CONF.SBS-JABR.2025.1/1.10Keywords:
forecasting, models, fundamental analysis, technical analysis, sentiment analysis, machine learning, artificial intelligence, hybrid modelsAbstract
Stock price forecasting has been a central question in finance for some time, with traditional models founded on the Efficient Market Hypothesis (EMH) and technical and fundamental analysis, which are often criticized for their inability to account for sentiment market dynamics and non-linear sentiment. Recent technological advances in Machine Learning (ML), Artificial Intelligence (AI), and Natural Language Processing have expanded and developed new sophisticated forecasting models. These new advanced models have expanded forecasting horizons by incorporating behavioral biases, multidimensional datasets, and investor sentiment. This paper critically reviews the literature on the evolution of stock forecasting methods, highlights the limitations of isolated approaches, and advances the development of more accurate, practically relevant forecasting models.
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