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Stock price data is diverse and situational, and it is unlikely that any single model will be uniformly best across all industries or contexts. Based on our results, ARIMA GARCH methods are better for Consumer Discretionary and Financial industries, and LSTM models are better for Healthcare and Industrials. Specifically, we found Cumulative Year…
Real-time quant pipeline utilizing a joint ARIMA-GARCH framework to model conditional mean and asset volatility. Features precise candle-boundary synchronization to eliminate clock drift, a CustomTkinter desktop UI monitor, SQLite persistence, and automated Telegram messaging alerts.
A comparative audit of 15+ time series architectures (ARIMA-GARCH, XGBoost, Transformers) across four temporal domains. Focuses on predictive robustness, residual adequacy (Ljung-Box, ARCH-LM), and statistical significance testing.