基于支持向量机和naïve贝叶斯分类器的myindihome用户评论情感分析

Sulton Nur Hakim, Andika Julianto Putra, A. U. Khasanah
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引用次数: 2

摘要

在全球化时代,互联网已经成为人们做各种事情的需要。许多互联网用户是互联网服务提供商PT Telekomunikasi Indonesia (Telkom)的机会。PT Telkom的产品之一是IndiHome。作为唯一一家从事电信业务的国有企业,PT Telkom有望满足印尼人民的需求。然而,根据IndiHome产品通过Google Play上的myIndiHome应用程序获得的评分,它在87,000多条评论中获得3.5分。这些评论集中在口碑对选择和使用互联网提供商产品的影响有多重要。综述数据采集时间为2020年11月1日至2020年12月15日,共2539篇综述作为样本。在进行情感分析的过程中,在2539条评论中,负面评论为1.160条,正面评论为1.374条。结果表明,IndiHome服务的服务错误率仍然很高,从差评数可以看出,服务错误率达到了46.7%。分类结果表明,支持向量机(SVM)方法的平均总准确率比Naïve贝叶斯分类器(NBC)方法高86.54%,后者的平均总准确率为84.69%。根据鱼骨图分析,差评中有12个问题,将问题分为5P因素:价格、人员、过程、地点和产品。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sentiment analysis on myindihome user reviews using support vector machine and naïve bayes classifier method
In the era of globalization, the internet has become a human need in doing various things. Many internet users are an opportunity for internet service providers, PT Telekomunikasi Indonesia (Telkom). One of PT Telkom's products is IndiHome. As the only state-owned enterprise engaged in telecommunications, PT Telkom is expected to meet the needs of the Indonesian people. However, based on the rating obtained by IndiHome products through the myIndiHome application on Google Play, it is 3.5 out of 87,000 more reviews. The reviews focus on how important the effect of word-of-mouth is on choosing and using internet provider products. The review data was collected on November 1, 2020 to December 15, 2020, with a total of 2,539 reviews as a sample.  The sentiment analysis process that has been carried out shows that the number of reviews included in the negative sentiment class was 1.160 reviews, and the positive class was 1.374 reviews out of a total of 2,539 reviews. The results indicate that service errors in IndiHome services are still quite high, reaching 46.7% as indicated by the number of negative reviews. The classification results show that the average value of the total accuracy of the Support Vector Machine (SVM) method is 86.54% greater than Naïve Bayes Classifier (NBC) method which has an average total accuracy of 84.69%.  Based on fishbone diagram analysis, there are 12nd problems on negative reviews that classify problems 5P factors: Price, People, Process, Place, and Product.
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