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Joint Item Recommendation and Attribute Inference

Le Wu, Yonghui Yang, Kun Zhang, Richang Hong, Yanjie Fu, Meng Wang

2020102 citationsDOI

Abstract

In many recommender systems, users and items are associated with attributes, and users show preferences to items. The attribute information describes users'(items') characteristics and has a wide range of applications, such as user profiling, item annotation, and feature-enhanced recommendation. As annotating user (item) attributes is a labor intensive task, the attribute values are often incomplete with many missing attribute values. Therefore, item recommendation and attribute inference have become two main tasks in these platforms. Researchers have long converged that user(item) attributes and the preference behavior are highly correlated. Some researchers proposed to leverage one kind of data for the remaining task, and showed to improve performance. Nevertheless, these models either neglected the incompleteness of user~(item) attributes or regarded the correlation of the two tasks with simple models, leading to suboptimal performance of these two tasks.

Topics & Concepts

Computer scienceInferenceRecommender systemLeverage (statistics)Profiling (computer programming)Task (project management)Information retrievalData miningMachine learningArtificial intelligenceEconomicsManagementOperating systemRecommender Systems and TechniquesAdvanced Graph Neural NetworksData Management and Algorithms