Collaborative Graph Learning for Session-based Recommendation

Zhiqiang Pan, Fei Cai, Wanyu Chen, Chonghao Chen, Honghui Chen
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引用次数: 21

Abstract

Session-based recommendation (SBR), which mainly relies on a user’s limited interactions with items to generate recommendations, is a widely investigated task. Existing methods often apply RNNs or GNNs to model user’s sequential behavior or transition relationship between items to capture her current preference. For training such models, the supervision signals are merely generated from the sequential interactions inside a session, neglecting the correlations of different sessions, which we argue can provide additional supervisions for learning the item representations. Moreover, previous methods mainly adopt the cross-entropy loss for training, where the user’s ground truth preference distribution towards items is regarded as a one-hot vector of the target item, easily making the network over-confident and leading to a serious overfitting problem. Thus, in this article, we propose a Collaborative Graph Learning (CGL) approach for session-based recommendation. CGL first applies the Gated Graph Neural Networks (GGNNs) to learn item embeddings and then is trained by considering both the main supervision as well as the self-supervision signals simultaneously. The main supervisions are produced by the sequential order while the self-supervisions are derived from the global graph constructed by all sessions. In addition, to prevent overfitting, we propose a Target-aware Label Confusion (TLC) learning method in the main supervised component. Extensive experiments are conducted on three publicly available datasets, i.e., Retailrocket, Diginetica, and Gowalla. The experimental results show that CGL can outperform the state-of-the-art baselines in terms of Recall and MRR.
基于会话推荐的协同图学习
基于会话的推荐(Session-based recommendation, SBR)是一项被广泛研究的任务,它主要依靠用户与物品的有限交互来生成推荐。现有的方法通常使用rnn或gnn来模拟用户的顺序行为或物品之间的转换关系,以捕获用户当前的偏好。对于训练这样的模型,监督信号仅仅是从会话内的顺序交互中产生的,忽略了不同会话之间的相关性,我们认为这可以为学习项目表示提供额外的监督。而且,以往的方法主要采用交叉熵损失进行训练,将用户对物品的真实度偏好分布视为目标物品的一个单热向量,容易使网络过于自信,导致严重的过拟合问题。因此,在本文中,我们提出了一种基于会话的推荐的协作图学习(CGL)方法。CGL首先应用门控图神经网络(GGNNs)学习项目嵌入,然后同时考虑主监督信号和自监督信号进行训练。主监督由序列排序产生,自监督由所有会话构造的全局图派生。此外,为了防止过拟合,我们在主监督组件中提出了一种目标感知标签混淆(TLC)学习方法。在三个公开可用的数据集上进行了广泛的实验,即Retailrocket, Diginetica和Gowalla。实验结果表明,CGL在召回率和MRR方面优于最先进的基线。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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