Recommendations as Treatments: Debiasing Learning and Evaluation
Machine Learning
2016-05-30 v2 Artificial Intelligence
Information Retrieval
Abstract
Most data for evaluating and training recommender systems is subject to selection biases, either through self-selection by the users or through the actions of the recommendation system itself. In this paper, we provide a principled approach to handling selection biases, adapting models and estimation techniques from causal inference. The approach leads to unbiased performance estimators despite biased data, and to a matrix factorization method that provides substantially improved prediction performance on real-world data. We theoretically and empirically characterize the robustness of the approach, finding that it is highly practical and scalable.
Cite
@article{arxiv.1602.05352,
title = {Recommendations as Treatments: Debiasing Learning and Evaluation},
author = {Tobias Schnabel and Adith Swaminathan and Ashudeep Singh and Navin Chandak and Thorsten Joachims},
journal= {arXiv preprint arXiv:1602.05352},
year = {2016}
}
Comments
10 pages in ICML 2016