Personalized News Recommendation with Multi-granularity Candidate-aware User Modeling
By: Qiang Li , Xinze Lin , Shenghao Lv and more
Potential Business Impact:
Shows you news you'll actually want to read.
Matching candidate news with user interests is crucial for personalized news recommendations. Most existing methods can represent a user's reading interests through a single profile based on clicked news, which may not fully capture the diversity of user interests. Although some approaches incorporate candidate news or topic information, they remain insufficient because they neglect the multi-granularity relatedness between candidate news and user interests. To address this, this study proposed a multi-granularity candidate-aware user modeling framework that integrated user interest features across various levels of granularity. It consisted of two main components: candidate news encoding and user modeling. A news textual information extractor and a knowledge-enhanced entity information extractor can capture candidate news features, and word-level, entity-level, and news-level candidate-aware mechanisms can provide a comprehensive representation of user interests. Extensive experiments on a real-world dataset demonstrated that the proposed model could significantly outperform baseline models.
Similar Papers
A Hybrid Recommendation Framework for Enhancing User Engagement in Local News
Information Retrieval
Helps local news find readers by showing what they like.
Is This News Still Interesting to You?: Lifetime-aware Interest Matching for News Recommendation
Information Retrieval
Shows you news you'll like, even if it's old.
Enhancing News Recommendation with Hierarchical LLM Prompting
Information Retrieval
Makes news apps show you stories you'll love.