论文标题

DDGHM:双动力学图与混合度量训练进行跨域顺序推荐

DDGHM: Dual Dynamic Graph with Hybrid Metric Training for Cross-Domain Sequential Recommendation

论文作者

Zheng, Xiaolin, Su, Jiajie, Liu, Weiming, Chen, Chaochao

论文摘要

顺序推荐(SR)通过对用户在项目之间的过境方式进行建模来表征用户行为不断发展的模式。但是,短相互作用序列限制了现有SR的性能。为了解决这个问题,我们在本文中专注于跨域顺序推荐(CDSR),该建议旨在利用其他域中的信息来提高单个域的顺序建议性能。解决CDSR具有挑战性。一方面,如何保留单个领域的偏好以及整合跨域影响仍然是一个基本问题。另一方面,由于合并序列的长度有限,数据稀疏问题无法通过简单地利用其他域的知识来完全解决。为了应对挑战,我们提出了DDGHM,这是CDSR问题的新型框架,其中包括两个主要模块,即双动态图形建模和混合度量训练。前者通过动态构造两级图,即局部图和全局图捕获内域和域间的顺序跃迁,并将它们与Fuse Contentive Gatentive Gating机制结合在一起。后者通过采用混合度量学习来增强用户和项目表示形式,包括实现保持一致性和对比度度量的协作指标,以确保均匀性,以进一步减轻数据稀少性问题并提高预测准确性。我们在两个基准数据集上进行实验,结果证明了DDHMG的有效性。

Sequential Recommendation (SR) characterizes evolving patterns of user behaviors by modeling how users transit among items. However, the short interaction sequences limit the performance of existing SR. To solve this problem, we focus on Cross-Domain Sequential Recommendation (CDSR) in this paper, which aims to leverage information from other domains to improve the sequential recommendation performance of a single domain. Solving CDSR is challenging. On the one hand, how to retain single domain preferences as well as integrate cross-domain influence remains an essential problem. On the other hand, the data sparsity problem cannot be totally solved by simply utilizing knowledge from other domains, due to the limited length of the merged sequences. To address the challenges, we propose DDGHM, a novel framework for the CDSR problem, which includes two main modules, i.e., dual dynamic graph modeling and hybrid metric training. The former captures intra-domain and inter-domain sequential transitions through dynamically constructing two-level graphs, i.e., the local graphs and the global graph, and incorporating them with a fuse attentive gating mechanism. The latter enhances user and item representations by employing hybrid metric learning, including collaborative metric for achieving alignment and contrastive metric for preserving uniformity, to further alleviate data sparsity issue and improve prediction accuracy. We conduct experiments on two benchmark datasets and the results demonstrate the effectiveness of DDHMG.

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