湖州师范学院信息工程学院,浙江 湖州 313000
[ "任宇彬(2000- ),男,湖州师范学院信息工程学院硕士生,主要研究方向为个性化推荐、数据挖掘。" ]
[ "王瑞琴(1979- ),女,博士,湖州师范学院信息工程学院教授,主要研究方向为自然语言处理、社交网络分析、个性化推荐。" ]
[ "隋欣怡(2000- ),女,湖州师范学院信息工程学院硕士生,主要研究方向为深度学习、自然语言处理、个性化推荐。" ]
[ "方驰(2000- ),男,湖州师范学院信息工程学院硕士生,主要研究方向为序列推荐、多模态推荐。" ]
收稿:2025-03-08,
修回:2025-05-30,
录用:2025-06-03,
纸质出版:2025-10-20
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任宇彬,王瑞琴,隋欣怡等.基于多通道超图卷积与跨视图对比学习的会话推荐[J].电信科学,2025,41(10):172-183.
REN Yubin,WANG Ruiqin,SUI Xinyi,et al.Cross-view contrastive learning and multi-channel hypergraph convolution for session-based recommendation[J].Telecommunications Science,2025,41(10):172-183.
任宇彬,王瑞琴,隋欣怡等.基于多通道超图卷积与跨视图对比学习的会话推荐[J].电信科学,2025,41(10):172-183. DOI: 10.11959/j.issn.1000-0801.2025233.
REN Yubin,WANG Ruiqin,SUI Xinyi,et al.Cross-view contrastive learning and multi-channel hypergraph convolution for session-based recommendation[J].Telecommunications Science,2025,41(10):172-183. DOI: 10.11959/j.issn.1000-0801.2025233.
会话推荐通过分析匿名用户的历史交互数据来预测下一个交互项。由于用户行为数据的稀疏性,从单个维度对会话表示进行建模可能无法全面地捕获用户的真实意图。此外,现有的会话推荐模型主要考虑会话项的顺序信息而忽略了不同会话项之间的高阶关系。因此,提出对比学习和多通道超图卷积(cross-view contrastive learning and multi-channel hypergraph convolution,CLMHC)模型,该模型构建了超图和全局超图两个互补的视图,通过通道混合注意力机制自适应地融合从两个超图通道中捕获的用户意图,并对不同视图空间的用户意图进行对比学习。在3个数据集上的实验研究表明,所提模型较现有模型在推荐准确性方面具有显著的提升,进一步的消融实验表明两个维度的视图表示均起到了积极作用。
Session-based recommendation predicts the next interaction item by analyzing anonymous users’ historical interaction data. Because of the sparsity of user behavior data
modeling session representations from a single perspective may fail to fully capture users’ true intentions. Moreover
existing session-based recommendation models primarily focus on the sequential order of session items while overlooking the higher-order relationships between them. To address this
the cross-view contrastive learning and multi-channel hypergraph convolution (CLMHC)model that constructs two complementary views was proposed: a hypergraph and a global hypergraph. By leveraging a channel-mixing attention mechanism
the model adaptively integrated the user intentions captured from both hypergraph channels while employing contrastive learning to refine user representations across different views. Extensive experiments on three datasets demonstrate that our model significantly outperforms existing approaches in recommendation accuracy. The ablation studies further confirm that both views contribute positively to performance improvement.
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