基于学习行为转换和用户意图的异构顺序推荐的全局和个性化图

Weixin Chen, Mingkai He, Yongxin Ni, Weike Pan, L. Chen, Zhong Ming
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引用次数: 5

摘要

异构顺序推荐(HSR)是一个非常重要的推荐问题,它旨在根据用户与不同行为的历史交互,预测用户在目标行为类型下(如在电子商务网站购买)的下一个交互项目。虽然现有的序列方法通过考虑与序列信息交互的各种影响而取得了先进的性能,但大部分序列方法仍然存在两个主要缺点。首先,它们通常分别对不同的行为进行建模,而不考虑它们之间的相关性。在不同行为下从一个项目到另一个项目的转换表明了用户潜在的行为方式。其次,虽然行为信息包含了用户细粒度的兴趣,但对局部上下文信息的考虑不足,限制了他们对用户意图的理解。利用相邻的交互来更好地理解用户的行为可以提高预测的确定性。为了解决这两个问题,我们提出了一种新的解决方案,利用高铁的全局和个性化图形(GPG4HSR)来学习行为转变和用户意图。具体来说,我们的GPG4HSR由两个图组成,即一个全局图用于捕获不同行为之间的转换,一个个性化图用于通过进一步考虑相邻上下文相关节点的不同用户意图来对具有行为的项目进行建模。在四个公共数据集上进行的大量实验证明了我们的方法GPG4HSR的有效性和普遍适用性。
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Global and Personalized Graphs for Heterogeneous Sequential Recommendation by Learning Behavior Transitions and User Intentions
Heterogeneous sequential recommendation (HSR) is a very important recommendation problem, which aims to predict a user’s next interacted item under a target behavior type (e.g., purchase in e-commerce sites) based on his/her historical interactions with different behaviors. Though existing sequential methods have achieved advanced performance by considering the varied impacts of interactions with sequential information, a large body of them still have two major shortcomings. Firstly, they usually model different behaviors separately without considering the correlations between them. The transitions from item to item under diverse behaviors indicate some users’ potential behavior manner. Secondly, though the behavior information contains a user’s fine-grained interests, the insufficient consideration of the local context information limits them from well understanding user intentions. Utilizing the adjacent interactions to better understand a user’s behavior could improve the certainty of prediction. To address these two issues, we propose a novel solution utilizing global and personalized graphs for HSR (GPG4HSR) to learn behavior transitions and user intentions. Specifically, our GPG4HSR consists of two graphs, i.e., a global graph to capture the transitions between different behaviors, and a personalized graph to model items with behaviors by further considering the distinct user intentions of the adjacent contextually relevant nodes. Extensive experiments on four public datasets with the state-of-the-art baselines demonstrate the effectiveness and general applicability of our method GPG4HSR.
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