Exponential Smoothing for Off-Policy Learning

05/25/2023
by   Imad Aouali, et al.
0

Off-policy learning (OPL) aims at finding improved policies from logged bandit data, often by minimizing the inverse propensity scoring (IPS) estimator of the risk. In this work, we investigate a smooth regularization for IPS, for which we derive a two-sided PAC-Bayes generalization bound. The bound is tractable, scalable, interpretable and provides learning certificates. In particular, it is also valid for standard IPS without making the assumption that the importance weights are bounded. We demonstrate the relevance of our approach and its favorable performance through a set of learning tasks. Since our bound holds for standard IPS, we are able to provide insight into when regularizing IPS is useful. Namely, we identify cases where regularization might not be needed. This goes against the belief that, in practice, clipped IPS often enjoys favorable performance than standard IPS in OPL.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/29/2018

Bayesian Counterfactual Risk Minimization

We present a Bayesian view of counterfactual risk minimization (CRM), al...
research
06/23/2021

Learning Stochastic Majority Votes by Minimizing a PAC-Bayes Generalization Bound

We investigate a stochastic counterpart of majority votes over finite en...
research
11/29/2022

PAC-Bayes Bounds for Bandit Problems: A Survey and Experimental Comparison

PAC-Bayes has recently re-emerged as an effective theory with which one ...
research
12/26/2017

Entropy-SGD optimizes the prior of a PAC-Bayes bound: Data-dependent PAC-Bayes priors via differential privacy

We show that Entropy-SGD (Chaudhari et al., 2016), when viewed as a lear...
research
05/20/2019

PAC-Bayes under potentially heavy tails

We derive PAC-Bayesian learning guarantees for heavy-tailed losses, and ...
research
08/06/2019

Policy Evaluation with Latent Confounders via Optimal Balance

Evaluating novel contextual bandit policies using logged data is crucial...
research
08/17/2018

Multiview Boosting by Controlling the Diversity and the Accuracy of View-specific Voters

In this paper we propose a boosting based multiview learning algorithm, ...

Please sign up or login with your details

Forgot password? Click here to reset