End-to-End Large Portfolio Optimization for Variance Minimization with Neural Networks through Covariance Cleaning
Christian Bongiorno, Efstratios Manolakis, Rosario Nunzio Mantegna

TL;DR
This paper introduces a rotation-invariant neural network that estimates minimum-variance portfolios with improved out-of-sample performance, robustness, and interpretability, applicable to large equity panels without retraining.
Contribution
The authors develop a mathematically interpretable neural network architecture that generalizes across dimensions and outperforms existing covariance estimation methods in portfolio optimization.
Findings
Lower realized volatility in out-of-sample tests
Smaller maximum drawdowns compared to competitors
Higher Sharpe ratios across various evaluation horizons
Abstract
We develop a rotation-invariant neural network that provides the global minimum-variance portfolio by jointly learning how to lag-transform historical returns and marginal volatilities and how to regularise the eigenvalues of large equity covariance matrices. This explicit mathematical mapping offers clear interpretability of each module's role, so the model cannot be regarded as a pure black box. The architecture mirrors the analytical form of the global minimum-variance solution yet remains agnostic to dimension, so a single model can be calibrated on panels of a few hundred stocks and applied, without retraining, to one thousand US equities, a cross-sectional jump that indicates robust generalization capability. The loss function is the future short-term realized minimum variance and is optimized end-to-end on real returns. In out-of-sample tests from January 2000 to December 2024,…
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