Joint Return and Risk Modeling with Deep Neural Networks for Portfolio Construction
arXiv cs.AI / 3/23/2026
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Key Points
- The paper proposes a joint return and risk modeling framework based on deep neural networks to enable end-to-end learning of dynamic returns and risk from sequential financial data.
- It uses daily data from ten large-cap US equities spanning 2010 to 2024 and shows competitive predictive accuracy (RMSE = 0.0264) and directional accuracy (51.9%), with learned representations that capture volatility clustering and regime shifts.
- When integrated into portfolio optimization, the Neural Portfolio strategy achieves 36.4% annual return and a Sharpe ratio of 0.91, outperforming equal-weight and historical mean-variance benchmarks.
- The results demonstrate that jointly modeling return and covariance dynamics provides a scalable, data-driven alternative for portfolio construction under nonstationary market conditions.