Hypergrah-Enhanced Dual Convolutional Network for Bundle Recommendation
- URL: http://arxiv.org/abs/2312.11018v1
- Date: Mon, 18 Dec 2023 08:35:10 GMT
- Title: Hypergrah-Enhanced Dual Convolutional Network for Bundle Recommendation
- Authors: Kangbo Liu, Yang Li, Yaoxin Wu, Zhaoxuan Wang, Xiaoxu Wang
- Abstract summary: We develop a unified model for bundle recommendation, termed hypergraph-enhanced dual convolutional neural network (HED)
Our approach is characterized by two key aspects. Firstly, we construct a complete hypergraph to capture interaction dynamics among users, items, and bundles. Secondly, we incorporate U-B interaction information to enhance the information representation derived from users and bundle embedding vectors.
- Score: 10.08634397606628
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Bundle recommendations strive to offer users a set of items as a package
named bundle, enhancing convenience and contributing to the seller's revenue.
While previous approaches have demonstrated notable performance, we argue that
they may compromise the ternary relationship among users, items, and bundles.
This compromise can result in information loss, ultimately impacting the
overall model performance. To address this gap, we develop a unified model for
bundle recommendation, termed hypergraph-enhanced dual convolutional neural
network (HED). Our approach is characterized by two key aspects. Firstly, we
construct a complete hypergraph to capture interaction dynamics among users,
items, and bundles. Secondly, we incorporate U-B interaction information to
enhance the information representation derived from users and bundle embedding
vectors. Extensive experimental results on the Youshu and Netease datasets have
demonstrated that HED surpasses state-of-the-art baselines, proving its
effectiveness. In addition, various ablation studies and sensitivity analyses
revealed the working mechanism and proved our effectiveness. Codes and datasets
are available at https://github.com/AAI-Lab/HED
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