Hoax COVID-19 News Detection Based on Sentiment Analysis in Indonesian using Support Vector Machine (SVM) Method

Alifia Shafira
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Abstract

The increasing use of technology makes it easier for information media such as news to be disseminated and does not demand possibilities, there is a lot of hoax news spreading. Twitter is one of the media most frequently used by the public to access and disseminate information. This research will focus on detecting Indonesian language COVID-19 news taken from Twitter. Detection of hoax news can be assisted by using sentiment analysis, one of the uses of classification text. Support Vector Machine (SVM) can be used to perform sentiment analysis tasks. After getting the sentiment analysis results, the hoax detection process will use the Bag of Words. Bag of Words is a collection of word dictionaries for weighting words to determine specific labels. The built SVM model succeeded in classifying tweet repliessentiment with an average accuracy of 83.17% with a threshold of 35%. At the same time, the hoax detection process gets the best accuracy of 62.5% with a threshold of -5 or -6.
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基于支持向量机(SVM)方法的印度尼西亚语情感分析的骗局COVID-19新闻检测
科技的日益普及使得信息媒体如新闻的传播变得更加容易,在不要求可能性的情况下,出现了大量的假新闻传播。Twitter是公众获取和传播信息最常用的媒体之一。这项研究将侧重于检测从Twitter上获取的印尼语COVID-19新闻。使用情感分析(分类文本的用途之一)可以辅助检测恶作剧新闻。支持向量机(SVM)可以用来执行情感分析任务。在获得情感分析结果后,恶作剧检测过程将使用词袋。Bag of Words是一个单词字典集合,用于对单词进行加权以确定特定的标签。所建立的SVM模型对tweet回复信息进行分类,平均准确率为83.17%,阈值为35%。同时,在阈值为-5或-6时,恶作剧检测过程的准确率达到62.5%。
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