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Multi-CALF: A Policy Combination Approach with Statistical Guarantees

Georgiy Malaniya, Anton Bolychev, Grigory Yaremenko, Anastasia Krasnaya, Pavel Osinenko

Year
2025
Access
Open access

Abstract

We introduce Multi-CALF, an algorithm that intelligently combines reinforcement learning policies based on their relative value improvements. Our approach integrates a standard RL policy with a theoretically-backed alternative policy, inheriting formal stability guarantees while often achieving better performance than either policy individually. We prove that our combined policy converges to a specified goal set with known probability and provide precise bounds on maximum deviation and convergence time. Empirical validation on control tasks demonstrates enhanced performance while maintaining stability guarantees.

Keywords

cs.LGcs.AIcs.ROeess.SYmath.OC

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