首页> 外文期刊>ACM transactions on knowledge discovery from data >Understanding Persuasion Cascades in Online Product Rating Systems: Modeling, Analysis, and Inference
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Understanding Persuasion Cascades in Online Product Rating Systems: Modeling, Analysis, and Inference

机译:了解在线产品评级系统中的说服级联:建模,分析和推理

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摘要

Online product rating systems have become an indispensable component for numerous web services such as Amazon, eBay, Google Play Store, and TripAdvisor. One functionality of such systems is to uncover the product quality via product ratings (or reviews) contributed by consumers. However, a well-known psychological phenomenon called "message-based persuasion" lead to "biased" product ratings in a cascading manner (we call this the persuasion cascade). This article investigates: (1) How does the persuasion cascade influence the product quality estimation accuracy? (2) Given a real-world product rating dataset, how to infer the persuasion cascade and analyze it to draw practical insights? We first develop a mathematical model to capture key factors of a persuasion cascade. We formulate a high-order Markov chain to characterize the opinion dynamics of a persuasion cascade and prove the convergence of opinions. We further bound the product quality estimation error for a class of rating aggregation rules including the averaging scoring rule, via the matrix perturbation theory and the Chernoff bound. We also design a maximum likelihood algorithm to infer parameters of the persuasion cascade. We conduct experiments on both synthetic data and real-world data from Amazon and TripAdvisor. Experiment results show that our inference algorithm has a high accuracy. Furthermore, persuasion cascades notably exist, but the average scoring rule has a small product quality estimation error under practical scenarios.
机译:在线产品评级系统已成为众多Web服务的不可或缺的组成部分,如亚马逊,eBay,Google Play商店和TripAdvisor。此类系统的一种功能是通过消费者贡献的产品评级(或评论)来揭示产品质量。然而,以级联方式称为“基于消息的劝说”的众所周知的心理现象导致“偏置”产品额定值(我们称之为说服级联)。本文调查:(1)说服级联如何影响产品质量估算准确性? (2)给定真实世界的产品评级数据集,如何推断说服级联并分析它以绘制实用的见解?我们首先开发一个数学模型来捕获说服级联的关键因素。我们制定了一个高阶马尔可夫链,以表征说服级联的意见动态,并证明了意见的趋同。我们通过矩阵扰动理论和Chernoff绑定,进一步绑定了一类等级聚合规则的产品质量估算误差,包括平均评分规则。我们还为推断说服级联的参数设计了最大的似然算法。我们从亚马逊和TripAdvisor的综合性数据和现实世界数据进行实验。实验结果表明,我们的推理算法具有高精度。此外,显着存在级联级联,但平均评分规则在实际情况下具有小的产品质量估算误差。

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