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首页> 外文期刊>Knowledge and Data Engineering, IEEE Transactions on >CommTrust: Computing Multi-Dimensional Trust by Mining E-Commerce Feedback Comments
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CommTrust: Computing Multi-Dimensional Trust by Mining E-Commerce Feedback Comments

机译:CommTrust:通过挖掘电子商务来计算多维信任反馈评论

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Reputation-based trust models are widely used in e-commerce applications, and feedback ratings are aggregated to compute sellers’ reputation trust scores. The “all good reputation” problem, however, is prevalent in current reputation systems—reputation scores are universally high for sellers and it is difficult for potential buyers to select trustworthy sellers. In this paper, based on the observation that buyers often express opinions openly in free text feedback comments, we propose CommTrust for trust evaluation by mining feedback comments. Our main contributions include: 1) we propose a multidimensional trust model for computing reputation scores from user feedback comments; and 2) we propose an algorithm for mining feedback comments for dimension ratings and weights, combining techniques of natural language processing, opinion mining, and topic modeling. Extensive experiments on eBay and Amazon data demonstrate that CommTrust can effectively address the “all good reputation” issue and rank sellers effectively. To the best of our knowledge, our research is the first piece of work on trust evaluation by mining feedback comments.
机译:基于声誉的信任模型已广泛用于电子商务应用程序,并且反馈评级被汇总以计算卖方的声誉信任分数。但是,“所有良好信誉”问题在当前的信誉系统中普遍存在-信誉分数对于卖家普遍很高,而潜在买家很难选择可信赖的卖家。本文基于购买者经常在自由文本反馈评论中公开表达意见的观察,我们提出了CommTrust,通过挖掘反馈评论来进行信任评估。我们的主要贡献包括:1)我们提出了一个多维信任模型,用于根据用户反馈评论计算信誉分数; 2)我们提出了一种算法,该算法结合了自然语言处理,观点挖掘和主题建模的技术,用于挖掘维度等级和权重的反馈注释。在eBay和Amazon数据上进行的大量实验表明,CommTrust可以有效解决“所有良好声誉”问题并有效地对卖家进行排名。据我们所知,我们的研究是通过挖掘反馈意见进行信任评估的第一项工作。

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