基于生成模型的在线评级数据信任网络推理

Freddy Chongtat Chua, Ee-Peng Lim
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引用次数: 35

摘要

在在线评分系统中,评分者对其他用户提供的对象进行评分。此外,评分者可以根据一些评级和信任相关的因素对对象贡献者产生信任和不信任。先前的研究表明,评级和信任联系可以相互影响,但缺乏将这些因素联系在一起的正式模型。因此,在本文中,我们提出了信任前因式(TAF)模型,这是一种基于一些评分者和贡献者因素生成评分的新型概率模型。我们证明了该模型的参数可以通过崩塌吉布斯抽样学习。然后,我们使用一个真实的数据集应用该模型来预测评分者和评审贡献者之间的信任和不信任。我们的实验表明,所提出的模型能够统一地预测信任和不信任。该模型还可以确定用户因素,否则无法从评级和信任数据中观察到。
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Trust network inference for online rating data using generative models
In an online rating system, raters assign ratings to objects contributed by other users. In addition, raters can develop trust and distrust on object contributors depending on a few rating and trust related factors. Previous study has shown that ratings and trust links can influence each other but there has been a lack of a formal model to relate these factors together. In this paper, we therefore propose Trust Antecedent Factor (TAF) Model, a novel probabilistic model that generate ratings based on a number of rater's and contributor's factors. We demonstrate that parameters of the model can be learnt by Collapsed Gibbs Sampling. We then apply the model to predict trust and distrust between raters and review contributors using a real data-set. Our experiments have shown that the proposed model is capable of predicting both trust and distrust in a unified way. The model can also determine user factors which otherwise cannot be observed from the rating and trust data.
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