Hiras Parasian Doloksaribu, Yusran Timur Samuel
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引用次数: 8

摘要

2019冠状病毒病大流行给印度尼西亚带来了许多变化。在PeduliLindungi向社区的申请中,政府向社区提出申请,希望能够在进入covid-19区域时提供警告以及其他来自covid-19的各种信息[1]。本研究的主要目的是分析目前在Covid-19大流行期间使用的PeduliLindungi用户的情绪,该应用程序已开始用于随时随地旅行,以了解用户是否接种了疫苗以及其他各种事情。比如病毒的传播和接种疫苗的地点。本研究的数据集来自Play Store。采用支持向量机和朴素贝叶斯算法对数据集进行分类。数据收集技术是文本挖掘,并比较了两种指定算法的结果。本研究的结果是支持向量机配合TF IDF矢量器,准确率为89.05%,其次是支持向量机配合计数矢量器、朴素贝叶斯配合TF IDF矢量器和朴素贝叶斯配合计数矢量器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
KOMPARASI ALGORITMA DATA MINING UNTUK ANALISIS SENTIMEN APLIKASI PEDULILINDUNGI
The COVID-19 pandemic has caused many changes to occur in Indonesia. In the PeduliLindungi application to the community, the government makes the application to the community in the hope of being able to provide a warning if it enters the covid-19 zone and various other information from covid-19 [1]. The main purpose of this study is to analyze the sentiments of PeduliLindungi users who are currently used during the Covid-19 pandemic, where this application has begun to be used to travel anywhere and anytime to find out whether the user has vaccinated or not and various other things. such as the spread of the virus and the location of vaccination. The dataset for this study was taken from the Play Store. The algorithm used is Support Vector Machine and Naive Bayes to classify the data set. The data collection technique is Text Mining and compares the results of the two specified algorithms. The results of this research are Support Vector Machine with TF IDF Vectorizer with 89.05% accuracy followed by Support Vector Machine with Count Vectorizer, Naive Bayes with TF IDF Vectorizer and Naive Bayes with Count Vectorizer.
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