Hierarchical Bayesian Models with Factorization for Content-Based Recommendation
Lanbo Zhang, Yi Zhang

TL;DR
This paper introduces flexible Bayesian hierarchical models with factored priors for content-based recommendation, capturing user diversity and multiple interests, and demonstrating improved performance over traditional models.
Contribution
The paper proposes Discriminative Factored Prior Models (DFPM) that model user profiles with factored priors, enhancing diversity, commonality, and multi-interest representation in content-based filtering.
Findings
DFPM significantly outperforms baseline models on real user data.
Models effectively capture multiple user interests.
Flexible priors improve recommendation accuracy.
Abstract
Most existing content-based filtering approaches learn user profiles independently without capturing the similarity among users. Bayesian hierarchical models \cite{Zhang:Efficient} learn user profiles jointly and have the advantage of being able to borrow discriminative information from other users through a Bayesian prior. However, the standard Bayesian hierarchical models assume all user profiles are generated from the same prior. Considering the diversity of user interests, this assumption could be improved by introducing more flexibility. Besides, most existing content-based filtering approaches implicitly assume that each user profile corresponds to exactly one user interest and fail to capture a user's multiple interests (information needs). In this paper, we present a flexible Bayesian hierarchical modeling approach to model both commonality and diversity among users as well as…
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Taxonomy
TopicsRecommender Systems and Techniques · Topic Modeling · Image Retrieval and Classification Techniques
