Sentiment Analysis of Yelp Review

Hussein Faisol, Kevin Djajadinata, Muljono Muljono
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Abstract

Digital data has developed very fast in the current era. Digital data has various forms, one of which is text data. There are a lot of text data source from many ways, such as review text data. Yelp is a local business directory and forum to review products, services, or places. We used Yelp’s review data to determine user’s sentiment or opinion about products, services, or places. Sentiment or opinion are classified into positive reviews, or negative reviews. The algorithms that used are Gaussian Naïve Bayes, Gaussian Naïve Bayes with AdaBoost, and K-NN. In this research review text data will be through a preprocessing and feature extraction stage. We used n-gram to extract the feature from the data with unigram, bigram and uni+bi-gram for indexing text. The result of this research that algorithms that has the highest accuracy rate was Gaussian Naïve Bayes with combined unigram and bigram with 86.7% from 5 fold cross-validation.
Yelp评论的情感分析
数字数据在当今时代发展非常迅速。数字数据有多种形式,其中一种是文本数据。有很多文本数据源来自很多方面,比如查看文本数据。Yelp是一个本地商业目录和论坛,用于评论产品、服务或地点。我们使用Yelp的评论数据来确定用户对产品、服务或地点的情绪或意见。情绪或意见分为正面评论和负面评论。使用的算法是高斯Naïve贝叶斯,高斯Naïve贝叶斯与AdaBoost,和K-NN。在本研究综述文本数据将经过预处理和特征提取阶段。我们使用n-gram从数据中提取特征,使用uniggram、biggram和uni+bi-gram对文本进行索引。本研究结果表明,准确率最高的算法是经过5次交叉验证的单图和双图组合的高斯Naïve Bayes,准确率为86.7%。
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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