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초록
Group recommendation aims at providing optimized recommendations tailored to diverse groups, enabling groups to enjoy appropriate items. On the other hand, most existing group recommendation methods are built upon deep neural network (DNN) architectures designed to capture the intricate relationships between member-level and group-level interactions. While these DNN-based approaches have proven their effectiveness, they require complex and expensive training procedures to incorporate group-level interactions in addition to member-level interactions. To overcome such limitations, we introduce Group-GF, a new approach for extremely fast recommendations of items to each group via multi-view graph filtering (GF) that offers a holistic view of complex member-group dynamics, without the need for costly model training. Specifically, in Group-GF, we first construct three item similarity graphs manifesting different viewpoints for GF. Then, we discover a distinct polynomial graph filter for each similarity graph and judiciously aggregate the three graph filters. Extensive experiments demonstrate the effectiveness of Group-GF in terms of significantly reducing runtime and achieving state-of-the-art recommendation accuracy.
키워드
- 제목
- Leveraging Member-Group Relations via Multi-View Graph Filtering for Effective Group Recommendation
- 저자
- Kim, Chae-Hyun; Choi, Yoon-Ryung; Park, Jin-Duk; Shin, Won-Yong
- 발행일
- 2025-05
- 유형
- Conference paper
- 저널명
- WWW Companion 2025 - Companion Proceedings of the ACM Web Conference 2025
- 페이지
- 1077 ~ 1081