Robust Rolling Regime Detection (R2-RD)

A. Boukardagha & A. Saunders (Citi) • International Review of Financial Analysis

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Original Paper
Citi Research working paper
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IRFA Paper
Journal submission version
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Literature Review
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Abstract

R2-RD is an explainable framework for cross-asset portfolio optimization under time-varying market regimes. It combines expanding-window HMM estimation with: (1) dynamic BIC-based regime count selection, (2) a regime emergence policy ensuring monotonically non-decreasing counts, and (3) Hungarian algorithm label matching for temporal consistency.

Empirically (2016-2024): Sharpe 0.93 vs 0.73 for KNN, max drawdown -15.79% vs -30.44%.

Regime Detection Hidden Markov Models Portfolio Optimization Explainable AI

Performance (2016-2024)

StrategyReturnVolatilitySharpeMax DDCalmar
R2-RD + MVO 8.42% 9.05% 0.93 -15.79% 0.53
KNN + MVO 7.89% 10.81% 0.73 -30.44% 0.26
Equal Weight 5.12% 11.23% 0.46 -32.17% 0.16
60/40 Benchmark 6.78% 10.45% 0.65 -24.56% 0.28

Identified Regimes

RegimeEquity μEquity σStock-Bond ρInterpretation
1+1.2%8.5%-0.25Low Volatility Bull
2+0.8%16.2%-0.35High Volatility Bull
3-0.5%18.7%+0.15Correction
4-3.2%32.4%+0.45Crisis

Methodology

Citation

@article{boukardagha2024r2rd,
  author    = {Boukardagha, Amine and Saunders, Alex},
  title     = {Explainable Regime-Aware Portfolio Optimization},
  journal   = {International Review of Financial Analysis},
  year      = {2024}
}