Classifying User Reviews at Sentence and Review Levels Utilizing Naïve Bayes

Yoichi Saito, V. Klyuev
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引用次数: 10

Abstract

Many products are sold on electronic commerce websites. Online customer reviews are available to help in selecting products to purchase. The products should be recommended by a special system that is capable to analyse and classify reviews because it is very hard for users to read many reviews and result of the recommendation should be personalized to suit user’s requirements. The aim of this research is to classify the online customer reviews accurately to obtain opinion mining techniques of the recommendation system. The research focuses on classifying the Japanese reviews into positive or non-positive. In this study, we classify the reviews at the sentence and the review level. The data set for the sentence-level classification contains the reviews of Electronic Devices category. The data set for the review-level classification contains the reviews of Mobile Phone Accessories category. This research also compares the results of our experiments and another research to evaluate the experimental results. This research is successful to obtain opinion mining techniques and the better results at the review-level classifications instead of the sentence-level classifications. The experimental results will contribute to the opinion mining phase of the recommendation system.
利用Naïve贝叶斯对句子和评论级别的用户评论进行分类
许多产品在电子商务网站上出售。在线客户评论可以帮助选择购买的产品。产品推荐应该通过一个特殊的系统,能够分析和分类的评论,因为用户很难阅读大量的评论,推荐的结果应该个性化,以满足用户的需求。本研究的目的是对在线顾客评论进行准确分类,从而获得推荐系统的意见挖掘技术。研究的重点是将日语评论分为积极和非积极两类。在本研究中,我们将评论分为句子级和评论级。句子级分类的数据集包含电子设备类别的评论。审查级别分类的数据集包含对移动电话配件类别的审查。本研究还将我们的实验结果与另一项研究的结果进行比较,以评估实验结果。本研究成功地获得了意见挖掘技术,并且在评论级分类上取得了比句子级分类更好的结果。实验结果将有助于推荐系统的意见挖掘阶段。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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