Understanding user interests and expertise is a vital component toward creating rich user models for information personalization in social media, recommender systems and web search. To capture the pair-wise interactions between geo-location and user's topical profile in social-spatial systems, we propose the modeling of fine-grained and multi-dimensional user geo-topic profiles. We then propose a two-layered Bayesian hierarchical user factorization generative framework to overcome user heterogeneity and another enhanced model integrated with user's contextual information to alleviate multi-dimensional sparsity. Through extensive experiments, we find the proposed model leads to a 5\textasciitilde13% improvement in precision and recall over the alternative baselines and an addi\tional 6\textasciitilde11% improvement with the integration of user's contexts.
CITATION STYLE
Lu, H., Niu, W., & Caverlee, J. (2018). Learning geo-social user topical profiles with Bayesian hierarchical user factorization. In 41st International ACM SIGIR Conference on Research and Development in Information Retrieval, SIGIR 2018 (pp. 205–214). Association for Computing Machinery, Inc. https://doi.org/10.1145/3209978.3210044
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