A Hybrid Machine Learning and Generative AI Architecture for Probabilistic Stock Range Prediction
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A Hybrid Machine Learning and Generative AI Architecture for Probabilistic Stock Range Prediction
R. SRINIKETH
Assistant Professor, Dept of CSE CMR Technical Campus Hyderabad, Telangana, India sriniketh@gmail.com
B. VAISHNAVI
UG Student, Dept of CSE CMR Technical Campus Hyderabad, Telangana, India 237r1a0571@cmrtc.ac.in
T. SAATHVIK REDDY
UG Student, Dept of CSE CMR Technical Campus Hyderabad, Telangana, India 237r1a05c1@cmrtc.ac.in
M. PRASHANTH KUMAR
UG Student, Dept of CSE CMR Technical Campus Hyderabad, Telangana, India 237r1a0599@cmrtc.ac.in
Abstract—In the financial sector, stock market prediction is traditionally approached by attempting to forecast a singular, exact future price point. However, these deterministic models frequently fail due to the inherent volatility of global markets. This paper presents a novel, web-based financial architecture that combines probabilistic machine learning with a Generative Artificial Intelligence (AI) translation layer. Instead of predicting an exact closing price, the proposed system utilizes XGBoost configured with Quantile Regression to generate a 90% confi- dence ”Safety Zone” (bounded by the 5th and 95th percentiles). To bridge the gap between complex quantitative outputs and retail investor comprehension, the architecture integrates a Large Language Model (LLM), specifically Gemini Flash, to dynami- cally translate technical indicators and real-time news sentiment into plain-English analogies. Deployed via a Streamlit interface, empirical backtesting over a 30-day trailing window demon- strates that bounding forecasts within dynamically adjusting quantiles significantly improves mathematical reliability while democratizing financial analytics for non-institutional users.Index Terms—Stock Market Prediction, Machine Learning, XGBoost, Quantile Regression, Generative AI, Large Language Models, Technical Analysis
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