2024
DOI: 10.1007/s11280-024-01267-2
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GroupMO: a memory-augmented meta-optimized model for group recommendation

Jiawei Hong,
Wen Yang,
Pingfu Chao
et al.

Abstract: Group recommendation aims to suggest desired items for a group of users. Existing methods can achieve inspiring results in predicting the group preferences in data-rich groups. However, they could be ineffective in supporting cold-start groups due to their sparsity interactions, which prevents the model from understanding their intent. Although cold-start groups can be alleviated by meta-learning, we cannot apply it by using the same initialization for all groups due to their varying preferences. To tackle thi… Show more

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