Factor-Based Conditional Diffusion Model for Portfolio Optimization

2025-09-28 19:00 GMT · 7 months ago aimagpro.com

arXiv:2509.22088v1 Announce Type: cross
Abstract: We propose a novel conditional diffusion model for portfolio optimization that learns the cross-sectional distribution of next-day stock returns conditioned on asset-specific factors. The model builds on the Diffusion Transformer with token-wise conditioning, linking each asset’s return to its own factor vector while capturing cross-asset dependencies. Generated return samples are used for daily mean-variance optimization under realistic constraints. Empirical results on the Chinese A-share market show that our approach consistently outperforms benchmark methods based on standard empirical and shrinkage-based estimators across multiple metrics.