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Aspect Ranking: Identifying Important Product Aspects from Online Consumer Reviews

机译:方面排名:通过在线消费者评论确定重要的产品方面

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In this paper, we dedicate to the topic of aspect ranking, which aims to automatically identify important product aspects from online consumer reviews. The important aspects are identified according to two observations: (a) the important aspects of a product are usually commented by a large number of consumers; and (b) consumers' opinions on the important aspects greatly influence their overall opinions on the product. In particular, given consumer reviews of a product, we first identify the product aspects by a shallow dependency parser and determine consumers' opinions on these aspects via a sentiment classifier. We then develop an aspect ranking algorithm to identify the important aspects by simultaneously considering the aspect frequency and the influence of consumers' opinions given to each aspect on their overall opinions. The experimental results on 11 popular products in four domains demonstrate the effectiveness of our approach. We further apply the aspect ranking results to the application of document-level sentiment classification, and improve the performance significantly.
机译:在本文中,我们专门介绍方面排名的主题,该方面旨在从在线消费者评论中自动识别重要的产品方面。根据以下两个方面来确定重要方面:(a)产品的重要方面通常由大量消费者评论; (b)消费者对重要方面的看法极大地影响了他们对产品的整体看法。特别地,给定消费者对产品的评论,我们首先通过浅层依赖性解析器识别产品方面,然后通过情感分类器确定消费者对这些方面的意见。然后,我们开发一种方面排序算法,通过同时考虑方面频率和消费者对每个方面的意见对其总体意见的影响,来识别重要方面。在四个领域的11种热门产品上的实验结果证明了我们方法的有效性。我们进一步将方面排名结果应用到文档级情感分类的应用中,并显着提高了性能。

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