Dynamic Factor Allocation Leveraging Regime-Switching Signals

The Journal of Portfolio Management, volume 51, issue 3, 2025[10.3905/jpm.2024.1.649]

Posted: 14 Oct 2024 Last revised: 18 Jan 2025

See all articles by Yizhan Shu

Yizhan Shu

Princeton University - Department of Operations Research & Financial Engineering (ORFE)

John M. Mulvey

Princeton University - Bendheim Center for Finance

Date Written: October 17, 2024

Abstract

This article explores dynamic factor allocation by analyzing the cyclical performance of factors through regime analysis. The authors focus on a U.S. equity investment universe comprising seven long-only indices representing the market and six style factors: value, size, momentum, quality, low volatility, and growth. Their approach integrates factor-specific regime inferences of each factor index’s active performance relative to the market into the Black-Litterman model to construct a fully-invested, long-only multi-factor portfolio. First, the authors apply the sparse jump model (SJM) to identify bull and bear market regimes for individual factors, using a feature set based on risk and return measures from historical factor active returns, as well as variables reflecting the broader market environment. The regimes identified by the SJM exhibit enhanced stability and interpretability compared to traditional methods. A hypothetical single-factor long-short strategy is then used to assess these regime inferences and fine-tune hyperparameters, resulting in a positive Sharpe ratio of this strategy across all factors with low correlation among them. These regime inferences are then incorporated into the Black-Litterman framework to dynamically adjust allocations among the seven indices, with an equally weighted (EW) portfolio serving as the benchmark. Empirical results show that the constructed multi-factor portfolio significantly improves the information ratio (IR) relative to the market, raising it from just 0.05 for the EW benchmark to approximately 0.4. When measured relative to the EW benchmark itself, the dynamic allocation achieves an IR of around 0.4 to 0.5. The strategy also enhances absolute portfolio performance across key metrics such as the Sharpe ratio and maximum drawdown. These findings highlight the effectiveness of leveraging regime-switching signals to enhance factor allocation by capitalizing on factor cyclicality.

Keywords: Factor Allocation, Smart Beta ETFs, Regime Switching, Statistical Jump Model, Black-Litterman model, Dynamic Asset Allocation

Suggested Citation

Shu, Yizhan and Mulvey, John M., Dynamic Factor Allocation Leveraging Regime-Switching Signals (October 17, 2024). The Journal of Portfolio Management, volume 51, issue 3, 2025[10.3905/jpm.2024.1.649], Available at SSRN: https://ssrn.com/abstract=4960484 or http://dx.doi.org/10.3905/jpm.2024.1.649

Yizhan Shu (Contact Author)

Princeton University - Department of Operations Research & Financial Engineering (ORFE) ( email )

Sherrerd Hall, Charlton Street
Princeton, NJ 08544
United States

John M. Mulvey

Princeton University - Bendheim Center for Finance ( email )

26 Prospect Avenue
Princeton, NJ 08540
United States

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