Multi-relation global context learning for session-based recommendation

IF 1.7 4区 计算机科学 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS Data Technologies and Applications Pub Date : 2023-03-16 DOI:10.1108/dta-07-2022-0290
Yishan Liu, Wenming Cao, Guitao Cao
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Abstract

PurposeSession-based recommendation aims to predict the user's next preference based on the user's recent activities. Although most existing studies consider the global characteristics of items, they only learn the global characteristics of items based on a single connection relationship, which cannot fully capture the complex transformation relationship between items. We believe that multiple relationships between items in learning sessions can improve the performance of session recommendation tasks and the scalability of recommendation models. At the same time, high-quality global features of the item help to explore the potential common preferences of users.Design/methodology/approachThis work proposes a session-based recommendation method with a multi-relation global context–enhanced network to capture this global transition relationship. Specifically, we construct a multi-relation global item graph based on a group of sessions, use a graded attention mechanism to learn different types of connection relations independently and obtain the global feature of the item according to the multi-relation weight.FindingsWe did related experiments on three benchmark datasets. The experimental results show that our proposed model is superior to the existing state-of-the-art methods, which verifies the effectiveness of our model.Originality/valueFirst, we construct a multi-relation global item graph to learn the complex transition relations of the global context of the item and effectively mine the potential association of items between different sessions. Second, our model effectively improves the scalability of the model by obtaining high-quality item global features and enables some previously unconsidered items to make it onto the candidate list.
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基于会话推荐的多关系全局上下文学习
基于会话的推荐旨在根据用户最近的活动来预测用户的下一个偏好。虽然现有的研究大多考虑了项目的全局特征,但它们只是基于单一的连接关系来学习项目的全局特征,无法充分捕捉到项目之间复杂的转换关系。我们认为,学习会话中项目之间的多重关系可以提高会话推荐任务的性能和推荐模型的可扩展性。同时,产品的高质量全球特征有助于探索用户潜在的共同偏好。设计/方法/方法本工作提出了一种基于会话的推荐方法,该方法采用多关系全局上下文增强网络来捕获这种全局转换关系。具体而言,我们基于一组会话构建了一个多关系全局项目图,使用分级注意机制独立学习不同类型的连接关系,并根据多关系权重获得项目的全局特征。我们在三个基准数据集上做了相关的实验。实验结果表明,该模型优于现有的最先进的方法,验证了该模型的有效性。首先,我们构建了一个多关系的全局项目图,学习了项目全局上下文的复杂过渡关系,有效挖掘了不同会话之间项目的潜在关联。其次,我们的模型通过获得高质量的物品全局特征,有效地提高了模型的可扩展性,并使一些之前未考虑的物品进入候选列表。
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来源期刊
Data Technologies and Applications
Data Technologies and Applications Social Sciences-Library and Information Sciences
CiteScore
3.80
自引率
6.20%
发文量
29
期刊介绍: Previously published as: Program Online from: 2018 Subject Area: Information & Knowledge Management, Library Studies
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