CT

Cam-Van Thi Thi Nguyen

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5 records found

Bundle recommendation aims to recommend a set of items to each user. However, the sparser interactions between users and bundles raise a big challenge, especially in cold-start scenarios. Traditional collaborative filtering methods do not work well for this kind of problem becaus ...
Bundle recommender systems merely learn from existing bundles, but obtaining large-scale, high-quality bundle datasets remains a challenge, especially for platforms newly adopting bundle services. Bundle construction is the task of automatically selecting a set of compatible item ...

BRIDGE

Bundle Recommendation via Instruction-Driven Generation

Bundle recommendation aims to suggest a set of interconnected items to users. However, diverse interaction types and sparse interaction matrices often pose challenges for previous approaches in accurately predicting user-bundle adoptions. Inspired by the distant supervision strat ...
Recommendation systems have faced significant challenges in cold-start scenarios, where new items with a limited history of interaction need to be effectively recommended to users. Though multimodal data (e.g., images, text, audio, etc.) offer rich information to address this iss ...
Bundle recommendation aims to enhance business profitability and user convenience by suggesting a set of interconnected items. In real-world scenarios, leveraging the impact of asymmetric item affiliations is crucial for effective bundle modeling and understanding user preference ...