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  5. MUSBO: Model-based Uncertainty Regularized and Sample Efficient Batch Optimization for Deployment Constrained Reinforcement Learning

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Preprint
en
2021

MUSBO: Model-based Uncertainty Regularized and Sample Efficient Batch Optimization for Deployment Constrained Reinforcement Learning

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0 Files

en
2021
DOI: 10.48550/arxiv.2102.11448arxiv.org/abs/2102.11448

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H Vincent Vincent Poort
H Vincent Vincent Poort

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DiJia Su
Jason D. Lee
John M. Mulvey
+1 more

Abstract

In many contemporary applications such as healthcare, finance, robotics, and recommendation systems, continuous deployment of new policies for data collection and online learning is either cost ineffective or impractical. We consider a setting that lies between pure offline reinforcement learning (RL) and pure online RL called deployment constrained RL in which the number of policy deployments for data sampling is limited. To solve this challenging task, we propose a new algorithmic learning framework called Model-based Uncertainty regularized and Sample Efficient Batch Optimization (MUSBO). Our framework discovers novel and high quality samples for each deployment to enable efficient data collection. During each offline training session, we bootstrap the policy update by quantifying the amount of uncertainty within our collected data. In the high support region (low uncertainty), we encourage our policy by taking an aggressive update. In the low support region (high uncertainty) when the policy bootstraps into the out-of-distribution region, we downweight it by our estimated uncertainty quantification. Experimental results show that MUSBO achieves state-of-the-art performance in the deployment constrained RL setting.

How to cite this publication

DiJia Su, Jason D. Lee, John M. Mulvey, H Vincent Vincent Poort (2021). MUSBO: Model-based Uncertainty Regularized and Sample Efficient Batch Optimization for Deployment Constrained Reinforcement Learning. , DOI: https://doi.org/10.48550/arxiv.2102.11448.

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Publication Details

Type

Preprint

Year

2021

Authors

4

Datasets

0

Total Files

0

Language

en

DOI

https://doi.org/10.48550/arxiv.2102.11448

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