Litcius/Paper detail

UserBERT

Chuhan Wu, Fangzhao Wu, Tao Qi, Yongfeng Huang

2022Proceedings of the 45th International ACM SIGIR Conference on Research and Development in Information Retrieval19 citationsDOI

Abstract

User modeling is critical for personalization. Existing methods usually train user models from task-specific labeled data, which may be insufficient. In fact, there are usually abundant unlabeled user behavior data that encode rich universal user information, and pre-training user models on them can empower user modeling in many downstream tasks. In this paper, we propose a user model pre-training method named UserBERT to learn universal user models on unlabeled user behavior data with two contrastive self-supervision tasks. The first one is masked behavior prediction and discrimination, aiming to model the contexts of user behaviors. The second one is behavior sequence matching, aiming to capture user interest stable in different periods. Besides, we propose a medium-hard negative sampling framework to select informative negative samples for better contrastive pre-training. Extensive experiments validate the effectiveness of UserBERT in user model pre-training.

Topics & Concepts

Computer scienceUser modelingPersonalizationTask (project management)Human–computer interactionUser informationArtificial intelligenceUser interfaceInformation systemWorld Wide WebOperating systemEngineeringManagementEconomicsElectrical engineeringRecommender Systems and TechniquesContext-Aware Activity Recognition SystemsTopic Modeling
UserBERT | Litcius