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CausPref: Causal Preference Learning for Out-of-Distribution Recommendation

Yue He, Zimu Wang, Peng Cui, Hao Zou, Yafeng Zhang, Qiang Cui, Yong Jiang

2022Proceedings of the ACM Web Conference 202247 citationsDOIOpen Access PDF

Abstract

In spite of the tremendous development of recommender system owing to the progressive capability of machine learning recently, the current recommender system is still vulnerable to the distribution shift of users and items in realistic scenarios, leading to the sharp decline of performance in testing environments. It is even more severe in many common applications where only the implicit feedback from sparse data is available. Hence, it is crucial to promote the performance stability of recommendation method in different environments. In this work, we first make a thorough analysis of implicit recommendation problem from the viewpoint of out-of-distribution (OOD) generalization. Then under the guidance of our theoretical analysis, we propose to incorporate the recommendation-specific DAG learner into a novel causal preference-based recommendation framework named CausPref, mainly consisting of causal learning of invariant user preference and anti-preference negative sampling to deal with implicit feedback. Extensive experimental results from real-world datasets clearly demonstrate that our approach surpasses the benchmark models significantly under types of out-of-distribution settings, and show its impressive interpretability.

Topics & Concepts

InterpretabilityRecommender systemComputer sciencePreferenceMachine learningGeneralizationArtificial intelligenceBenchmark (surveying)Stability (learning theory)Data miningMathematicsMathematical analysisStatisticsGeodesyGeographyRecommender Systems and TechniquesAdvanced Graph Neural NetworksDomain Adaptation and Few-Shot Learning
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