Herlawati Herlawati, Rahmadya Trias Handayanto, Prima Dina Atika, Fata Nidaul Khasanah, Ajif Yunizar Pratama Yusuf, Dwi Yoga Septia
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引用次数: 4
摘要
旅游是收入的来源,受顾客满意度的影响。了解客户满意度的一种方法是反馈,其中之一是使用应用程序进行审查。其中一个反馈应用是谷歌评论。这样的应用已经得到了广泛的应用,例如在本研究中,在本案例研究中,Summarecon Mal Bekasi,可以达到6万条评论。为了找出大量评论的情绪,有必要使用计算工具。目前的研究使用Naïve贝叶斯方法和支持向量机进行情感分析。数据检索是通过网页抓取技术完成的。此外,通过使用Lexicon字典进行预处理和标记来处理评论数据。应用情绪分析的过程是进行,以确定评论是积极的还是消极的。在本研究中,Naïve贝叶斯和支持向量机方法对2,143条评论的Summarecon Mal Bekasi评论进行情感分析的准确率为Naïve,贝叶斯和支持向量机的准确率分别为80.95%和100%。构建了一个jason风格的应用程序来展示Flask框架中的实现。关键词:
Analisis Sentimen Pada Situs Google Review dengan Naïve Bayes dan Support Vector Machine
Tourism is the sources of income which is influenced by customer satisfaction. One way to know customer satisfaction is feedback, one of which is a review using an application. One of the feedback applications is Google Review. Such applications are have been widely used, for example in this study in this case study, Summarecon Mal Bekasi, can reach 60,000 comments. To find out the sentiment of the large number of comments, it is necessary to use computational tools. The current research applies sentiment analysis using the Naïve Bayes method and the Support Vector Machine. Data retrieval is done by web scrapping technique. Furthermore, the comment data is processed by pre-processing and labelling using the Lexicon dictionary. The process of applying sentiment analysis is carried out to determine whether the comments are positive or negative. In this study, the accuracy of the Naïve Bayes and Support Vector Machine methods in conducting sentiment analysis on the Summarecon Mal Bekasi review with a data of 2,143 comments with an accuracy for Naïve Bayes and Support Vector Machine 80.95% and 100% respectively. A Jason-style application is built to show the implementation in Flask framework.
Keywords: