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Meta-Learned Specific Scenario Interest Network for User Preference Prediction

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Published:11 July 2021Publication History

ABSTRACT

User preference prediction is a task of learning user interests through user-item interactions. Most existing studies capture user interests based on historical behaviors without considering specific scenario information. However, the users may have special interests in these specific scenarios and sometimes user historical behaviors are limited. In this paper, we propose a Meta-Learned Specific Scenario Interest Network (Meta-SSIN) to predict user preference of target item by capturing specific scenario interests. Meta-SSIN uses multiple independent meta-learning modules to model historical behaviors in each scenario. The independent module can capture special interests based on limited behaviors. Experimental results on three datasets show that Meta-SSIN outperforms compared state-of-the-art methods.

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    • Published in

      cover image ACM Conferences
      SIGIR '21: Proceedings of the 44th International ACM SIGIR Conference on Research and Development in Information Retrieval
      July 2021
      2998 pages
      ISBN:9781450380379
      DOI:10.1145/3404835

      Copyright © 2021 ACM

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      New York, NY, United States

      Publication History

      • Published: 11 July 2021

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