A Framework for Predictive Directional Trading Based on Volatility and Causal Inference
Ivan Letteri

TL;DR
This paper presents a new framework combining statistical and machine learning methods to identify and exploit predictive lead-lag relationships in financial markets, focusing on volatility and causal inference for improved trading strategies.
Contribution
It introduces an integrated approach using clustering, causal inference, and time series analysis to develop a robust, volatility-based trading strategy with demonstrated profitability.
Findings
The strategy achieved a 15.38% return in backtesting period.
It outperformed a standard buy-and-hold strategy.
The approach yielded high Sharpe Ratio and win rate, confirming effectiveness.
Abstract
Purpose: This study introduces a novel framework for identifying and exploiting predictive lead-lag relationships in financial markets. We propose an integrated approach that combines advanced statistical methodologies with machine learning models to enhance the identification and exploitation of predictive relationships between equities. Methods: We employed a Gaussian Mixture Model (GMM) to cluster nine prominent stocks based on their mid-range historical volatility profiles over a three-year period. From the resulting clusters, we constructed a multi-stage causal inference pipeline, incorporating the Granger Causality Test (GCT), a customised Peter-Clark Momentary Conditional Independence (PCMCI) test, and Effective Transfer Entropy (ETE) to identify robust, predictive linkages. Subsequently, Dynamic Time Warping (DTW) and a K-Nearest Neighbours (KNN) classifier were utilised to…
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Taxonomy
TopicsStock Market Forecasting Methods
