Multi-domain recommender systems benefit from cross-domain representation learning and positive knowledge transfer. Both can be achieved by introducing a specific modeling of input data (i.e. disjoint history) or trying dedicated training regimes. At the same time, treating domains as separate input sources becomes a limitation as it does not capture the interplay that naturally exists between domains. In this work, we efficiently learn multi-domain representation of sequential users' interactions using graph neural networks. We use temporal intra- and inter-domain interactions as contextual information for our method called MAGRec (short for Multi-domAin Graph-based Recommender). To better capture all relations in a multi-domain setting, we learn two graph-based sequential representations simultaneously: domain-guided for recent user interest, and general for long-term interest. This approach helps to mitigate the negative knowledge transfer problem from multiple domains and improve overall representation. We perform experiments on publicly available datasets in different scenarios where MAGRec consistently outperforms state-of-the-art methods. Furthermore, we provide an ablation study and discuss further extensions of our method.
翻译:多主推荐人系统受益于跨域代表性学习和积极的知识转让。两者都可以通过引入输入数据的具体模型(即脱节历史)或尝试专门的培训制度来实现。同时,将域作为独立的输入源处理会成为一个局限性,因为它不能反映不同领域之间自然存在的相互作用。在这项工作中,我们通过图形神经网络,有效地学习了相继用户互动的多域代表。我们用时间性内部和跨域互动作为我们称为MAGRec(多环形图形参考软件的短期)的方法的背景信息。为了更好地在多域环境中捕捉所有关系,我们同时学习了两个基于图表的相继表达方式:最近用户兴趣的域导和长期利益。这个方法有助于减轻多个领域的负面知识转移问题,改善总体代表性。我们实验了不同情景中公开提供的数据集,在这些情景中,MAGRec持续地超越了最新方法。此外,我们提供了一种缩略图研究,并讨论我们方法的进一步扩展。