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Joint Return and Risk Modeling with Deep Neural Networks for Portfolio Construction

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NOW LET US Article – Joint Return and Risk Modeling with Deep Neural Networks for Portfolio Construction

This paper proposes a joint return and risk modeling framework using deep neural networks for end-to-end portfolio construction. The 'Neural Portfolio' strategy achieved a 36.4% annual return and a 0.91 Sharpe ratio, significantly outperforming traditional benchmarks in nonstationary market conditions.

Quantitative Finance > Portfolio Management

Title: Joint Return and Risk Modeling with Deep Neural Networks for Portfolio Construction

Portfolio construction traditionally relies on separately estimating expected returns and covariance matrices using historical statistics, often leading to suboptimal allocation under time-varying market conditions. This paper proposes a joint return and risk modeling framework based on deep neural networks that enables end-to-end learning of dynamic expected returns and risk structures from sequential financial data.

Using daily data from ten large-cap US equities spanning 2010 to 2024, the proposed model is evaluated across return prediction, risk estimation, and portfolio-level performance. Out-of-sample results during 2020 to 2024 show that the deep forecasting model achieves competitive predictive accuracy (RMSE = 0.0264) with economically meaningful directional accuracy (51.9%).

More importantly, the learned representation effectively captures volatility clustering and regime shifts. When integrated into portfolio optimization, the proposed Neural Portfolio strategy achieves an annual return of 36.4% and a Sharpe ratio of 0.91, outperforming equal weight and historical mean-variance benchmarks in terms of risk-adjusted performance. These findings demonstrate that jointly modeling return and covariance dynamics can provide consistent improvements over traditional allocation approaches. The framework offers a scalable and practical alternative for data-driven portfolio construction under nonstationary market conditions.

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Source: arXiv cs.AI Recent

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