Large-scale Validation of Counterfactual Learning Methods: A Test-Bed
Abstract
The ability to perform effective off-policy learning would revolutionize the process of building better interactive systems, such as search engines and recommendation systems for e-commerce, computational advertising and news. Recent approaches for off-policy evaluation and learning in these settings appear promising. With this paper, we provide real-world data and a standardized test-bed to systematically investigate these algorithms using data from display advertising. In particular, we consider the problem of filling a banner ad with an aggregate of multiple products the user may want to purchase. This paper presents our test-bed, the sanity checks we ran to ensure its validity, and shows results comparing state-of-the-art off-policy learning methods like doubly robust optimization, POEM, and reductions to supervised learning using regression baselines. Our results show experimental evidence that recent off-policy learning methods can improve upon state-of-the-art supervised learning techniques on a large-scale real-world data set.
Cite
@article{arxiv.1612.00367,
title = {Large-scale Validation of Counterfactual Learning Methods: A Test-Bed},
author = {Damien Lefortier and Adith Swaminathan and Xiaotao Gu and Thorsten Joachims and Maarten de Rijke},
journal= {arXiv preprint arXiv:1612.00367},
year = {2017}
}
Comments
10 pages, What If workshop NIPS 2016