Bayesian Deep Learning with Trust and Distrust in Recommendation Systems

Dimitrios Rafailidis
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引用次数: 8

Abstract

Exploiting the selections of social friends and foes can efficiently face the data scarcity of user preferences and the cold-start problem. In this paper, we present a Social Deep Pairwise Learning model, namely SDPL. According to the Bayesian Pairwise Ranking criterion, we design a loss function with multiple ranking criteria based on the selections of users, and those in their friends and foes to improve the accuracy in the top-k recommendation task. We capture the nonlinearity in user preferences and the social information of trust and distrust relationships by designing a deep learning architecture. In each backpropagation step, we perform social negative sampling to meet the multiple ranking criteria of our loss function. Our experiments on a benchmark dataset from Epinions, among the largest publicly available that has been reported in the relevant literature, demonstrate the effectiveness of the proposed approach, outperforming other state-of-the art methods. In addition, we show that our deep learning strategy plays an important role in capturing the nonlinear associations between user preferences and the social information of trust and distrust relationships, and demonstrate that our social negative sampling strategy is a key factor in SDPL.CCS CONCEPTS • Information systems → Collaborative and social computing systems and tools.
推荐系统中基于信任和不信任的贝叶斯深度学习
利用社交好友和社交敌人的选择可以有效地解决用户偏好的数据稀缺性和冷启动问题。在本文中,我们提出了一个社会深度配对学习模型,即SDPL。根据贝叶斯配对排序准则,设计了基于用户选择、好友选择和敌人选择的多个排序准则的损失函数,以提高top-k推荐任务的准确率。我们通过设计一个深度学习架构来捕捉用户偏好的非线性以及信任和不信任关系的社会信息。在每个反向传播步骤中,我们执行社会负抽样以满足损失函数的多个排序标准。我们在Epinions的基准数据集上进行的实验,是相关文献中报道的最大的公开可用数据集之一,证明了所提出方法的有效性,优于其他最先进的方法。此外,我们还证明了我们的深度学习策略在捕获用户偏好与信任和不信任关系的社会信息之间的非线性关联方面发挥了重要作用,并证明了我们的社会负抽样策略是SDPL的关键因素。•信息系统→协作和社会计算系统和工具。
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