Support Vector Machine For Hoax Detection

Ni Wayan, Sumartini Saraswati, I. Putu, Krisna Suarendra Putra, Dewa Made, Krishna Muku, Gede Dana Pramitha
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Abstract

Along with the development of information technology, news media has also developed by presenting information online Along with the rapid development of online news, the spread of fake news information (hoaxes) is also increasing rapidly and widely. Hoax news is often spread intentionally for various purposes. Generally, hoax news aims to direct the reader's perception to believe in a bad perception of an event, character or even a company. The motivation is to invite readers to believe something that is not true with the aim of benefiting the news disseminator is something dangerous. This research aims to detect English-language hoaxes by applying the Support vector machine (SVM) algorithm. In this study, the data used are two data sources, namely English news datasets from Kaggle and English news taken from BBC. The results of this study show that the application of the SVM algorithm turns out to get good performance because the model is able to classify hoax news with an accuracy of 99.4% on Kaggle data while on the BBC news dataset the model gets an accuracy of 98.9%. This research also shows that the SVM method is proven to have good generalization properties. Where it is able to identify test data that is completely different from the training data.
支持向量机骗局检测
随着信息技术的发展,新闻媒体也通过在网络上呈现信息而发展起来。随着网络新闻的快速发展,虚假新闻信息(hoaxes)的传播也在迅速而广泛地增加。虚假新闻通常是出于各种目的而故意传播的。一般来说,恶作剧新闻的目的是引导读者相信对事件、人物甚至公司的不良看法。其动机是为了让读者相信一些不真实的东西,从而使新闻传播者受益,这是危险的事情。本研究旨在应用支持向量机(SVM)算法检测英语骗局。在本研究中,使用的数据是两个数据源,即来自Kaggle的英语新闻数据集和来自BBC的英语新闻。本研究的结果表明,SVM算法的应用获得了良好的性能,因为该模型能够在Kaggle数据上对恶作剧新闻进行分类,准确率为99.4%,而在BBC新闻数据集上,该模型的准确率为98.9%。研究也证明了支持向量机方法具有良好的泛化性能。它能够识别与训练数据完全不同的测试数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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