IMPLEMENTASI ALGORITMA NAÏVE BAYES CLASSIFIER DAN SUPPORT VECTOR MACHINE PADA KLASIFIKASI SENTIMEN REVIEW LAYANAN TELEMEDICINE HALODOC

Reynalda Nabila Cikania
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引用次数: 2

Abstract

Halodoc is a telemedicine-based healthcare application that connects patients with health practitioners such as doctors, pharmacies, and laboratories. There are some comments from halodoc users, both positive and negative comments. This indicates the public's concern for the Halodoc application so it is necessary to analyze the sentiment or comments that appear on the Halodoc application service, especially during the COVID-19 pandemic in order for Halodoc application services to be better. The Naïve Bayes Classifier (NBC) and Support Vector Machine (SVM) algorithms are used to analyze the public sentiment of Halodoc's telemedicine service application users. The negative category sentiment classification result was 12.33%, while the positive category sentiment was 87.67% from 5,687 reviews which means that the positive review sentiment is more than the negative review sentiment. The accuracy performance of the Naive Bayes Classifier Algorithm resulted in an accuracy rate of 87.77% with an AUC value of 57.11% and a G-Mean of 40.08%, while svm algorithm with KERNEL RBF had an accuracy value of 86.1% with an AUC value of 60.149% and a G-Mean value of 49.311%. Based on the accuracy value of the model can be known SVM Kernel RBF model better than NBC on classifying the review of user sentiment of halodoc telemedicine service
Halodoc是一个基于远程医疗的医疗保健应用程序,可将患者与医生、药房和实验室等医疗从业人员联系起来。有一些来自halodoc用户的评论,有正面的也有负面的。这表明公众对Halodoc应用的关注,因此有必要对Halodoc应用服务上出现的情绪或评论进行分析,特别是在COVID-19大流行期间,以便更好地提供Halodoc应用服务。利用Naïve贝叶斯分类器(NBC)和支持向量机(SVM)算法对Halodoc远程医疗服务应用用户的舆情进行分析。在5687篇评论中,负面类情绪分类结果为12.33%,而正面类情绪分类结果为87.67%,即正面评论情绪多于负面评论情绪。朴素贝叶斯分类器算法的准确率为87.77%,AUC值为57.11%,G-Mean为40.08%,而KERNEL RBF支持向量机算法的准确率为86.1%,AUC值为60.149%,G-Mean值为49.311%。基于该模型的准确率值可知SVM核RBF模型在对halodoc远程医疗服务的用户情感评论进行分类时优于NBC模型
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