Scaling Conditional Autoencoders for Portfolio Optimization via Uncertainty-Aware Factor Selection
Abstract
Conditional Autoencoders (CAEs) offer a flexible, interpretable approach for estimating latent asset-pricing factors from firm characteristics. However, existing studies usually limit the latent factor dimension to around K=5 due to concerns that larger K can degrade performance. To overcome this challenge, we propose a scalable framework that couples a high-dimensional CAE with an uncertainty-aware factor selection procedure. We employ three models for quantile prediction: zero-shot Chronos, a pretrained time-series foundation model (ZS-Chronos), gradient-boosted quantile regression trees using XGBoost and RAPIDS (Q-Boost), and an I.I.D bootstrap-based sample mean model (IID-BS). For each model, we rank factors by forecast uncertainty and retain the top-k most predictable factors for portfolio construction, where k denotes the selected subset of factors. This pruning strategy delivers substantial gains in risk-adjusted performance across all forecasting models. Furthermore, due to each model's uncorrelated predictions, a performance-weighted ensemble consistently outperforms individual models with higher Sharpe, Sortino, and Omega ratios.
Keywords
Cite
@article{arxiv.2511.17462,
title = {Scaling Conditional Autoencoders for Portfolio Optimization via Uncertainty-Aware Factor Selection},
author = {Ryan Engel and Yu Chen and Pawel Polak and Ioana Boier},
journal= {arXiv preprint arXiv:2511.17462},
year = {2025}
}
Comments
9 pages, 6 figures. Published in Proceedings of the 6th ACM International Conference on AI in Finance (ICAIF '25)