Sentiment classification from reviews for tourism analytics

Nur Aliah Khairina Mohd Haris, S. Mutalib, A. Malik, S. Abdul-Rahman, Siti Nur Kamaliah Kamarudin
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引用次数: 0

Abstract

User-generated content is critical for tourism destination management as it could help them identify their customers' opinions and come up with solutions to upgrade their tourism organizations as it could help them identify customer opinions. There are many reviews on social media and it is difficult for these organizations to analyse the reviews manually. By applying sentiment classification, reviews can be classified into several classes and help ease decision-making. The reviews contain noisy contents, such as typos and emoticons, which could affect the accuracy of the classifiers. This study evaluates the reviews using Support Vector Machine and Random Forest models to identify a suitable classifier. The main phases in this study are data collection, data preparation, data labelling and modelling phases. The reviews are labelled into three sentiments; positive, neutral, and negative. During pre-processing, steps such as removing the missing value, tokenization, case folding, stop words removal, stemming, and applying n-grams are performed. The result of this research is evaluated by looking at the performance of the models based on accuracy where the result with the highest accuracy is chosen as the solution. In this study, data is data from TripAdvisor and Google reviews using web scraping tools. The findings show that the Support Vector Machine model with 5-fold cross-validation the most suitable classifier with an accuracy of 67.97% compared to Naive Bayes with 61.33% accuracy and Random Forest classifier with 63.55% accuracy. In conclusion, the result of this paper could provide important information in tourism besides determining the suitable algorithm to be used for Sentiment Analysis related to the tourism domain.
基于旅游分析的评论情感分类
用户生成的内容对旅游目的地管理至关重要,因为它可以帮助他们识别客户的意见,并提出解决方案来升级他们的旅游组织,因为它可以帮助他们识别客户的意见。社交媒体上有很多评论,这些组织很难手动分析这些评论。通过应用情感分类,评论可以分为几个类别,并有助于简化决策。评论包含嘈杂的内容,如错别字和表情符号,这可能会影响分类器的准确性。本研究使用支持向量机和随机森林模型来评估评论,以确定合适的分类器。本研究的主要阶段是数据收集、数据准备、数据标记和建模阶段。这些评论分为三种观点;积极的,中性的,消极的。在预处理期间,执行诸如删除缺失值、标记化、折叠大小写、删除停止词、词干提取和应用n-gram等步骤。本研究的结果是通过查看基于精度的模型的性能来评估的,其中选择具有最高精度的结果作为解决方案。在这项研究中,数据是来自TripAdvisor和谷歌使用网络抓取工具的评论数据。结果表明,5倍交叉验证的支持向量机模型是最合适的分类器,准确率为67.97%,而朴素贝叶斯的准确率为61.33%,随机森林分类器的准确率为63.55%。综上所述,本文的研究结果可以为旅游领域的情感分析提供重要的信息,并为旅游领域的情感分析提供合适的算法。
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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来源期刊
International Journal of Advances in Intelligent Informatics
International Journal of Advances in Intelligent Informatics Computer Science-Computer Vision and Pattern Recognition
CiteScore
3.00
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