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Dual Learning for Explainable Recommendation: Towards Unifying User Preference Prediction and Review Generation

Peijie Sun, Le Wu, Kun Zhang, Yanjie Fu, Richang Hong, Meng Wang

202086 citationsDOIOpen Access PDF

Abstract

In many recommender systems, users express item opinions through two kinds of behaviors: giving preferences and writing detailed reviews. As both kinds of behaviors reflect users’ assessment of items, review enhanced recommender systems leverage these two kinds of user behaviors to boost recommendation performance. On the one hand, researchers proposed to better model the user and item embeddings with additional review information for enhancing preference prediction accuracy. On the other hand, some recent works focused on automatically generating item reviews for recommendation explanations with related user and item embeddings. We argue that, while the task of preference prediction with the accuracy goal is well recognized in the community, the task of generating reviews for explainable recommendation is also important to gain user trust and increase conversion rate. Some preliminary attempts have considered jointly modeling these two tasks, with the user and item embeddings are shared. These studies empirically showed that these two tasks are correlated, and jointly modeling them would benefit the performance of both tasks.

Topics & Concepts

Dual (grammatical number)Computer sciencePreferenceRecommender systemArtificial intelligenceMachine learningMathematicsStatisticsLiteratureArtRecommender Systems and TechniquesTopic ModelingAdvanced Graph Neural Networks
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