Behavior Estimation from Multi-Source Data for Offline Reinforcement
Learning
- URL: http://arxiv.org/abs/2211.16078v3
- Date: Fri, 26 May 2023 05:05:38 GMT
- Title: Behavior Estimation from Multi-Source Data for Offline Reinforcement
Learning
- Authors: Guoxi Zhang and Hisashi Kashima
- Abstract summary: Behavior estimation aims at estimating the policy with which training data are generated.
This work considers a scenario where the data are collected from multiple sources.
With extensive evaluation this work confirms the existence of behavior misspecification and the efficacy of the proposed model.
- Score: 20.143230846339804
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Offline reinforcement learning (RL) have received rising interest due to its
appealing data efficiency. The present study addresses behavior estimation, a
task that lays the foundation of many offline RL algorithms. Behavior
estimation aims at estimating the policy with which training data are
generated. In particular, this work considers a scenario where the data are
collected from multiple sources. In this case, neglecting data heterogeneity,
existing approaches for behavior estimation suffers from behavior
misspecification. To overcome this drawback, the present study proposes a
latent variable model to infer a set of policies from data, which allows an
agent to use as behavior policy the policy that best describes a particular
trajectory. This model provides with a agent fine-grained characterization for
multi-source data and helps it overcome behavior misspecification. This work
also proposes a learning algorithm for this model and illustrates its practical
usage via extending an existing offline RL algorithm. Lastly, with extensive
evaluation this work confirms the existence of behavior misspecification and
the efficacy of the proposed model.
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