Benchmarks for Deep Off-Policy Evaluation
Abstract
Off-policy evaluation (OPE) holds the promise of being able to leverage large, offline datasets for both evaluating and selecting complex policies for decision making. The ability to learn offline is particularly important in many real-world domains, such as in healthcare, recommender systems, or robotics, where online data collection is an expensive and potentially dangerous process. Being able to accurately evaluate and select high-performing policies without requiring online interaction could yield significant benefits in safety, time, and cost for these applications. While many OPE methods have been proposed in recent years, comparing results between papers is difficult because currently there is a lack of a comprehensive and unified benchmark, and measuring algorithmic progress has been challenging due to the lack of difficult evaluation tasks. In order to address this gap, we present a collection of policies that in conjunction with existing offline datasets can be used for benchmarking off-policy evaluation. Our tasks include a range of challenging high-dimensional continuous control problems, with wide selections of datasets and policies for performing policy selection. The goal of our benchmark is to provide a standardized measure of progress that is motivated from a set of principles designed to challenge and test the limits of existing OPE methods. We perform an evaluation of state-of-the-art algorithms and provide open-source access to our data and code to foster future research in this area.
Cite
Text
Fu et al. "Benchmarks for Deep Off-Policy Evaluation." International Conference on Learning Representations, 2021.Markdown
[Fu et al. "Benchmarks for Deep Off-Policy Evaluation." International Conference on Learning Representations, 2021.](https://mlanthology.org/iclr/2021/fu2021iclr-benchmarks/)BibTeX
@inproceedings{fu2021iclr-benchmarks,
title = {{Benchmarks for Deep Off-Policy Evaluation}},
author = {Fu, Justin and Norouzi, Mohammad and Nachum, Ofir and Tucker, George and Wang, Ziyu and Novikov, Alexander and Yang, Mengjiao and Zhang, Michael R and Chen, Yutian and Kumar, Aviral and Paduraru, Cosmin and Levine, Sergey and Paine, Thomas},
booktitle = {International Conference on Learning Representations},
year = {2021},
url = {https://mlanthology.org/iclr/2021/fu2021iclr-benchmarks/}
}