Saved in:
Bibliographic Details
Main Authors: Zenati, Houssam, Bietti, Alberto, Martin, Matthieu, Diemert, Eustache, Gaillard, Pierre, Mairal, Julien
Format: Preprint
Published: 2020
Subjects:
Online Access:https://arxiv.org/abs/2004.11722
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866912240153657344
author Zenati, Houssam
Bietti, Alberto
Martin, Matthieu
Diemert, Eustache
Gaillard, Pierre
Mairal, Julien
author_facet Zenati, Houssam
Bietti, Alberto
Martin, Matthieu
Diemert, Eustache
Gaillard, Pierre
Mairal, Julien
contents Counterfactual reasoning from logged data has become increasingly important for many applications such as web advertising or healthcare. In this paper, we address the problem of learning stochastic policies with continuous actions from the viewpoint of counterfactual risk minimization (CRM). While the CRM framework is appealing and well studied for discrete actions, the continuous action case raises new challenges about modelization, optimization, and~offline model selection with real data which turns out to be particularly challenging. Our paper contributes to these three aspects of the CRM estimation pipeline. First, we introduce a modelling strategy based on a joint kernel embedding of contexts and actions, which overcomes the shortcomings of previous discretization approaches. Second, we empirically show that the optimization aspect of counterfactual learning is important, and we demonstrate the benefits of proximal point algorithms and smooth estimators. Finally, we propose an evaluation protocol for offline policies in real-world logged systems, which is challenging since policies cannot be replayed on test data, and we release a new large-scale dataset along with multiple synthetic, yet realistic, evaluation setups.
format Preprint
id arxiv_https___arxiv_org_abs_2004_11722
institution arXiv
publishDate 2020
record_format arxiv
spellingShingle Counterfactual Learning of Stochastic Policies with Continuous Actions
Zenati, Houssam
Bietti, Alberto
Martin, Matthieu
Diemert, Eustache
Gaillard, Pierre
Mairal, Julien
Machine Learning
Counterfactual reasoning from logged data has become increasingly important for many applications such as web advertising or healthcare. In this paper, we address the problem of learning stochastic policies with continuous actions from the viewpoint of counterfactual risk minimization (CRM). While the CRM framework is appealing and well studied for discrete actions, the continuous action case raises new challenges about modelization, optimization, and~offline model selection with real data which turns out to be particularly challenging. Our paper contributes to these three aspects of the CRM estimation pipeline. First, we introduce a modelling strategy based on a joint kernel embedding of contexts and actions, which overcomes the shortcomings of previous discretization approaches. Second, we empirically show that the optimization aspect of counterfactual learning is important, and we demonstrate the benefits of proximal point algorithms and smooth estimators. Finally, we propose an evaluation protocol for offline policies in real-world logged systems, which is challenging since policies cannot be replayed on test data, and we release a new large-scale dataset along with multiple synthetic, yet realistic, evaluation setups.
title Counterfactual Learning of Stochastic Policies with Continuous Actions
topic Machine Learning
url https://arxiv.org/abs/2004.11722