Litcius/Paper detail

Multiple Robust Learning for Recommendation

Haoxuan Li, Quanyu Dai, Yuru Li, Yan Lyu, Zhenhua Dong, Xiao‐Hua Zhou, Peng Wu

2023Proceedings of the AAAI Conference on Artificial Intelligence23 citationsDOIOpen Access PDF

Abstract

In recommender systems, a common problem is the presence of various biases in the collected data, which deteriorates the generalization ability of the recommendation models and leads to inaccurate predictions. Doubly robust (DR) learning has been studied in many tasks in RS, with the advantage that unbiased learning can be achieved when either a single imputation or a single propensity model is accurate. In this paper, we propose a multiple robust (MR) estimator that can take the advantage of multiple candidate imputation and propensity models to achieve unbiasedness. Specifically, the MR estimator is unbiased when any of the imputation or propensity models, or a linear combination of these models is accurate. Theoretical analysis shows that the proposed MR is an enhanced version of DR when only having a single imputation and propensity model, and has a smaller bias. Inspired by the generalization error bound of MR, we further propose a novel multiple robust learning approach with stabilization. We conduct extensive experiments on real-world and semi-synthetic datasets, which demonstrates the superiority of the proposed approach over state-of-the-art methods.

Topics & Concepts

Computer scienceGeneralization errorEstimatorImputation (statistics)Recommender systemGeneralizationArtificial intelligenceMachine learningRobustness (evolution)Synthetic dataMissing dataMathematicsStatisticsArtificial neural networkBiochemistryChemistryGeneMathematical analysisMachine Learning and ELMFace and Expression RecognitionMulti-Criteria Decision Making