Business Reviews Classification Using Sentiment Analysis

Andreea Salinca
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引用次数: 47

Abstract

The research area of sentiment analysis, opinion mining, sentiment mining and sentiment extraction has gained popularity in the last years. Online reviews are becoming very important criteria in measuring the quality of a business. This paper presents a sentiment analysis approach to business reviews classification using a large reviews dataset provided by Yelp: Yelp Challenge dataset. In this work, we propose several approaches for automatic sentiment classification, using two feature extraction methods and four machine learning models. It is illustrated a comparative study on the effectiveness of the ensemble methods for reviews sentiment classification.
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基于情感分析的商业评论分类
近年来,情感分析、意见挖掘、情感挖掘和情感提取等研究领域得到了广泛的关注。在线评论正在成为衡量业务质量的非常重要的标准。本文提出了一种情感分析方法,利用Yelp提供的大型评论数据集:Yelp挑战数据集进行商业评论分类。在这项工作中,我们提出了几种自动情感分类的方法,使用两种特征提取方法和四种机器学习模型。最后对集成方法在评论情感分类中的有效性进行了对比研究。
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