Session-based recommendation which has been witnessed a booming interest recently, focuses on predicting a user's next interested item(s) based on an anonymous session. Most existing studies adopt complex deep learning techniques (e.g., graph neural networks) for effective session-based recommendation. However, they merely address \emph{co-occurrence} between items, but fail to well distinguish \emph{causality} and \emph{correlation} relationship. Considering the varied interpretations and characteristics of causality and correlation relationship between items, in this study, we propose a novel method denoted as CGSR by jointly modeling causality and correlation relationship between items. In particular, we construct cause, effect and correlation graphs from sessions by simultaneously considering the false causality problem. We further design a graph neural network-based method for session-based recommendation. Extensive experiments on three datasets show that our model outperforms other state-of-the-art methods in terms of recommendation accuracy. Moreover, we further propose an explainable framework on CGSR, and demonstrate the explainability of our model via case studies on Amazon dataset.
翻译:最近有人对届会提出的一个建议表现出浓厚的兴趣,重点是根据匿名会议预测用户下一个感兴趣的项目,大多数现有研究都采用复杂的深层次学习技术(如图形神经网络),以便提出有效的届会建议。然而,这些研究仅仅针对项目之间的偏差,但却未能明确区分项目之间的偏差和偏差关系。考虑到项目之间因果关系和关联关系的不同解释和特点,我们在本研究中提出了一个新颖的方法,通过联合建模项目之间的因果关系和关联关系,称为CGSR。特别是,我们通过同时考虑错误的因果关系问题,从会议建立原因、效果和关联图。我们进一步设计基于会议建议的基于线性网络的图形方法。对三个数据集进行的广泛实验表明,我们的模型在建议准确性方面超越了其他最先进的方法。此外,我们进一步提出了关于CGSR的可解释框架,并展示了我们模型在亚马孙案例研究中的解释性。