HEC-GCN: Hypergraph Enhanced Cascading Graph Convolution Network for Multi-Behavior Recommendation
Multi-behavior recommendation (MBR) has garnered growing attention recently due to its ability to mitigate the sparsity issue by inferring user preferences from various auxiliary behaviors to improve predictions for the target behavior. Although existing research on MBR has yielded impressive result...
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Zusammenfassung: | Multi-behavior recommendation (MBR) has garnered growing attention recently
due to its ability to mitigate the sparsity issue by inferring user preferences
from various auxiliary behaviors to improve predictions for the target
behavior. Although existing research on MBR has yielded impressive results,
they still face two major limitations. First, previous methods mainly focus on
modeling fine-grained interaction information between users and items under
each behavior, which may suffer from sparsity issue. Second, existing models
usually concentrate on exploiting dependencies between two consecutive
behaviors, leaving intra- and inter-behavior consistency largely unexplored. To
the end, we propose a novel approach named Hypergraph Enhanced Cascading Graph
Convolution Network for multi-behavior recommendation (HEC-GCN). To be
specific, we first explore both fine- and coarse-grained correlations among
users or items of each behavior by simultaneously modeling the
behavior-specific interaction graph and its corresponding hypergraph in a
cascaded manner. Then, we propose a behavior consistency-guided alignment
strategy that ensures consistent representations between the interaction graph
and its associated hypergraph for each behavior, while also maintaining
representation consistency across different behaviors. Extensive experiments
and analyses on three public benchmark datasets demonstrate that our proposed
approach is consistently superior to previous state-of-the-art methods due to
its capability to effectively attenuate the sparsity issue as well as preserve
both intra- and inter-behavior consistencies. The code is available at
https://github.com/marqu22/HEC-GCN.git. |
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DOI: | 10.48550/arxiv.2412.14476 |