Dual-Channel Multiplex Graph Neural Networks for Recommendation
arxiv(2024)
摘要
Efficient recommender systems play a crucial role in accurately capturing
user and item attributes that mirror individual preferences. Some existing
recommendation techniques have started to shift their focus towards modeling
various types of interaction relations between users and items in real-world
recommendation scenarios, such as clicks, marking favorites, and purchases on
online shopping platforms. Nevertheless, these approaches still grapple with
two significant shortcomings: (1) Insufficient modeling and exploitation of the
impact of various behavior patterns formed by multiplex relations between users
and items on representation learning, and (2) ignoring the effect of different
relations in the behavior patterns on the target relation in recommender system
scenarios. In this study, we introduce a novel recommendation framework,
Dual-Channel Multiplex Graph Neural Network (DCMGNN), which addresses the
aforementioned challenges. It incorporates an explicit behavior pattern
representation learner to capture the behavior patterns composed of multiplex
user-item interaction relations, and includes a relation chain representation
learning and a relation chain-aware encoder to discover the impact of various
auxiliary relations on the target relation, the dependencies between different
relations, and mine the appropriate order of relations in a behavior pattern.
Extensive experiments on three real-world datasets demonstrate that our surpasses various state-of-the-art recommendation methods. It outperforms the
best baselines by 10.06% and 12.15% on average across all datasets in terms
of R@10 and N@10 respectively.
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