Re-evaluating Short- and Long-Term Trend Factors in CTA Replication: A Bayesian Graphical Approach

Benhamou, Eric, Ohana, Jean-Jacques, Etienne, Alban, Guez, Béatrice, Setrouk, Ethan, Jacquot, Thomas

arXiv.org Artificial Intelligence 

Commodity Trading Advisors (CT As) have historically relied on trend-following rules that operate on vastly different horizons--from long-term breakouts that capture major directional moves to short-term momentum signals that thrive in fast-moving markets. Despite a large body of work on trend following, the relative merits and interactions of short-versus long-term trend systems remain controversial. This paper adds to the debate by (i) dynamically decomposing CT A returns into short-term trend, long-term trend and market beta factors using a Bayesian graphical model, and (ii) showing how the blend of horizons shapes the strategy's risk-adjusted performance.