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Off-Policy Evaluation in Partially Observable Environments

Guy Tennenholtz, Uri Shalit, Shie Mannor

202032 citationsDOIOpen Access PDF

Abstract

This work studies the problem of batch off-policy evaluation for Reinforcement Learning in partially observable environments. Off-policy evaluation under partial observability is inherently prone to bias, with risk of arbitrarily large errors. We define the problem of off-policy evaluation for Partially Observable Markov Decision Processes (POMDPs) and establish what we believe is the first off-policy evaluation result for POMDPs. In addition, we formulate a model in which observed and unobserved variables are decoupled into two dynamic processes, called a Decoupled POMDP. We show how off-policy evaluation can be performed under this new model, mitigating estimation errors inherent to general POMDPs. We demonstrate the pitfalls of off-policy evaluation in POMDPs using a well-known off-policy method, Importance Sampling, and compare it with our result on synthetic medical data.

Topics & Concepts

ObservabilityObservableComputer sciencePartially observable Markov decision processMarkov decision processReinforcement learningMathematical optimizationWork (physics)Markov processMarkov chainMarkov modelArtificial intelligenceMachine learningMathematicsStatisticsMechanical engineeringQuantum mechanicsEngineeringPhysicsApplied mathematicsReinforcement Learning in RoboticsGene Regulatory Network Analysis