Efficient Counterfactual Learning from Bandit Feedback
Machine Learning
2018-12-07 v3 Artificial Intelligence
Information Retrieval
Methodology
Machine Learning
Abstract
What is the most statistically efficient way to do off-policy evaluation and optimization with batch data from bandit feedback? For log data generated by contextual bandit algorithms, we consider offline estimators for the expected reward from a counterfactual policy. Our estimators are shown to have lowest variance in a wide class of estimators, achieving variance reduction relative to standard estimators. We then apply our estimators to improve advertisement design by a major advertisement company. Consistent with the theoretical result, our estimators allow us to improve on the existing bandit algorithm with more statistical confidence compared to a state-of-the-art benchmark.
Keywords
Cite
@article{arxiv.1809.03084,
title = {Efficient Counterfactual Learning from Bandit Feedback},
author = {Yusuke Narita and Shota Yasui and Kohei Yata},
journal= {arXiv preprint arXiv:1809.03084},
year = {2018}
}
Comments
accepted at AAAI 2019