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Assessing the Quality of Online Reviews Using Formal Argumentation Theory

机译:使用正式论证理论评估在线评论的质量

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Review scores collect users' opinions in a simple and intuitive manner. However, review scores are also easily manipulable, hence they are often accompanied by explanations. A substantial amount of researc h has been devoted to ascertaining the quality of reviews, to identify the most useful and authentic scores through explanation analysis. In this paper, we advance the state of the art in review quality analysis. We introduce a rating system to identify review arguments and to define an appropriate weighted semantics through formal argumentation theory. We introduce an algorithm to construct a corresponding graph, based on a selection of weighted arguments, their semantic similarity, and the supported ratings. We provide an algorithm to identify the model of such an argumentation graph, maximizing the overall weight of the admitted nodes and edges. We evaluate these contributions on the Amazon review dataset by McAuley et al. [15], by comparing the results of our argumentation assessment with the upvotes received by the reviews. Also, we deepen the evaluation by crowdsourcing a multidimensional assessment of reviews and comparing it to the argumentation assessment. Lastly, we perform a user study to evaluate the explainability of our method. Our method achieves two goals: (1) it identifies reviews that are considered useful, comprehensible, truthful by online users and does so in an unsupervised manner, and (2) it provides an explanation of quality assessments.
机译:评论分数以简单而直观的方式收集用户的意见。然而,审查分数也很容易可操纵,因此它们通常伴随着解释。大量的RESEARC H已经致力于确定评论的质量,以识别通过解释分析来确定最有用和最真实的分数。本文在审查质量分析中推进了最先进的技术。我们介绍评级系统来识别审查参数,并通过正式论证理论来定义适当的加权语义。我们介绍了一种算法来构建相应的图形,基于选择加权参数,它们的语义相似性和支持的额定值。我们提供了一种识别这种论证图的模型的算法,最大化所录取的节点和边缘的总重量。我们通过Mcauley等人评估了亚马逊评论数据集的这些贡献。 [15],通过将审查评估的结果与审查所收回的争论进行比较。此外,我们通过将多维评估评估进行评估来加深评估,并将其与论证评估进行比较。最后,我们执行用户学习以评估我们方法的解释性。我们的方法实现了两个目标:(1)它识别了在线用户被认为有用,可理解的,真实的审查,并以无人监督的方式进行,(2)它提供了对质量评估的解释。

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