Explicit Behavior Interaction with Heterogeneous Graph for Multi-behavior Recommendation
Zhongping Zhang,
Yin Jia,
Yuehan Hou
et al.
Abstract:Multi-behavior recommendation systems exploit multi-type user–item interactions (e.g., clicking, adding to cart and collecting) as auxiliary behaviors for user modeling, which can alleviate the problem of data sparsity faced by traditional recommendation systems. The key point of multi-behavior recommendation systems is to make full use of the auxiliary behavior information for the learning of user preferences. However, there are two challenges in existing methods that need to be explored: (1) capturing person… Show more
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