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Feature Extraction and Opinion Mining in Online Product Reviews

机译:在线产品评论中的特征提取和观点挖掘

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In this era of web applications, web shopping portals have become increasingly popular as they allow customers to buy products from home. These websites often request the customers to rate their products and write reviews, which helps the manufacturers to improve the quality of their products and other customers in choosing the right product or service. The rapid increase in the popularity of e-commerce has increased the number of customers in these type of web-shopping portals, leading to an enormous number of reviews for each product or service. Each of these reviews may describe the different features of the products. Hence, the customer has to go through a large number of reviews before s/he can arrive to a fully informed decision on whether to buy the product or not. In this paper, we describe a system, which automatically extracts the product features from the reviews and determines if they have been expressed in a positive or a negative way by the reviewers. The proposed algorithm works in two steps, viz feature extraction and polarity classification. We use association rule mining to identify the most characteristic features of a product. In the second step we develop a supervised machine learning algorithm based polarity classifier that determines the sentiment of the review sentences with respect to the prominent features. Our experiments on the benchmark reviews of five popular products show that our classifier is highly efficient and achieves an accuracy of 79.67%. We did not make use of any domain specific resources and tools, and thus our classifier is domain-independent, and can be used for the similar tasks in other domains.
机译:在这个Web应用程序时代,Web购物门户网站变得越来越流行,因为它们允许客户在家中购买产品。这些网站经常要求客户对他们的产品进行评分并撰写评论,这有助于制造商在选择正确的产品或服务时提高其产品和其他客户的质量。电子商务的迅速普及已经增加了这类Web购物门户中的客户数量,从而导致对每种产品或服务的大量评论。这些评论中的每一个都可能描述产品的不同功能。因此,客户必须先进行大量评论,然后才能做出关于是否购买该产品的充分知情决定。在本文中,我们描述了一个系统,该系统会自动从评论中提取产品功能,并确定评论人是否以正面或负面的方式表达了产品特征。该算法分两步进行,即特征提取和极性分类。我们使用关联规则挖掘来识别产品的最典型特征。在第二步中,我们开发了一种基于监督的机器学习算法,该算法基于极性分类器,可根据突出特征确定评论句子的情感。我们对五种热门产品进行基准测试的实验表明,我们的分类器非常高效,准确率达到79.67%。我们没有使用任何特定于域的资源和工具,因此我们的分类器是与域无关的,可以用于其他域中的类似任务。

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