FR-LUX: Friction-Aware, Regime-Conditioned Policy Optimization for Implementable Portfolio Management
This addresses the challenge of implementable portfolio management for traders and investors by providing a robust, cost-aware method, though it appears incremental as it builds on existing RL approaches with specific enhancements.
The paper tackles the problem of portfolio management failing in live trading due to transaction costs and regime shifts by introducing FR-LUX, a reinforcement learning framework that learns after-cost trading policies robust across volatility-liquidity regimes, achieving top average Sharpe ratios with narrow confidence intervals and superior risk-return efficiency for given turnover budgets.
Transaction costs and regime shifts are major reasons why paper portfolios fail in live trading. We introduce FR-LUX (Friction-aware, Regime-conditioned Learning under eXecution costs), a reinforcement learning framework that learns after-cost trading policies and remains robust across volatility-liquidity regimes. FR-LUX integrates three ingredients: (i) a microstructure-consistent execution model combining proportional and impact costs, directly embedded in the reward; (ii) a trade-space trust region that constrains changes in inventory flow rather than logits, yielding stable low-turnover updates; and (iii) explicit regime conditioning so the policy specializes to LL/LH/HL/HH states without fragmenting the data. On a 4 x 5 grid of regimes and cost levels with multiple random seeds, FR-LUX achieves the top average Sharpe ratio with narrow bootstrap confidence intervals, maintains a flatter cost-performance slope than strong baselines, and attains superior risk-return efficiency for a given turnover budget. Pairwise scenario-level improvements are strictly positive and remain statistically significant after multiple-testing corrections. We provide formal guarantees on optimality under convex frictions, monotonic improvement under a KL trust region, long-run turnover bounds and induced inaction bands due to proportional costs, positive value advantage for regime-conditioned policies, and robustness to cost misspecification. The methodology is implementable: costs are calibrated from standard liquidity proxies, scenario-level inference avoids pseudo-replication, and all figures and tables are reproducible from released artifacts.