AI RESEARCH

Replicable Reinforcement Learning with Linear Function Approximation

arXiv CS.LG

ArXi:2509.08660v3 Announce Type: replace Replication of experimental results has been a challenge faced by many scientific disciplines, including the field of machine learning. Recent work on the theory of machine learning has formalized replicability as the demand that an algorithm produce identical outcomes when executed twice on different samples from the same distribution. Provably replicable algorithms are especially interesting for reinforcement learning (RL), where algorithms are known to be unstable in practice.