Hierarchical Sentence Sentiment Analysis Of Hotel Reviews Using The Naïve Bayes Classifier

Sandy Kurniawan, R. Kusumaningrum, Melnyi Ehonia Timu
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引用次数: 11

Abstract

Traveloka provides a space for its users to write reviews about their hotel reservation services. These reviews are very useful in informing hotel managers of the level of customer satisfaction. Sentiment analysis is a tool that can be used to analyse such reviews to determine whether they express opinions or not, so that the level of customer satisfaction can be measured based on the number of sentiments (positive or negative) contained in the opinions. In this research, the Naïve Bayes classifier was used to perform a hierarchical sentence sentiment analysis on hotel reviews obtained from Traveloka. In addition, two types of term weighting schemes were used for the feature extraction, namely, raw term frequency and TF-IDF. The results of this research indicated that it is better to use a hierarchical classification in sentiment analysis than a flat classification. The average F-measure value for the flat classification model was 75.18%, while for the hierarchical classification model it was 77.48%. These results showed that the use of a hierarchical classification in sentiment analysis improved the average performance of the classification model by 2.3%. The use of the raw term frequency feature extraction in a flat classification provided a higher F-measure value than the use of the TF-IDF feature extraction, with a margin of 3.9%. The average F-measure value for the flat classification using the raw term frequency feature extraction was 75.18%, while for the TF-IDF feature extraction it was 71.23%.
基于Naïve贝叶斯分类器的酒店评论分层句子情感分析
Traveloka为用户提供了一个撰写酒店预订服务评论的空间。这些评论在告知酒店经理顾客满意程度方面非常有用。情感分析是一种工具,可以用来分析这些评论,以确定它们是否表达了意见,从而可以根据意见中包含的情绪(积极或消极)的数量来衡量客户满意度的水平。在本研究中,使用Naïve贝叶斯分类器对Traveloka获得的酒店评论进行分层句子情感分析。此外,还采用了两种术语加权方案进行特征提取,即原始术语频率和TF-IDF。本研究结果表明,在情感分析中使用层次分类比使用平面分类效果更好。平面分类模型的平均f测量值为75.18%,层次分类模型的平均f测量值为77.48%。这些结果表明,在情感分析中使用层次分类将分类模型的平均性能提高了2.3%。在平面分类中使用原始词频率特征提取比使用TF-IDF特征提取提供了更高的f测量值,差值为3.9%。使用原始词频率特征提取的平面分类的平均f测量值为75.18%,而使用TF-IDF特征提取的平均f测量值为71.23%。
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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