Machine Learning Algorithm based model for classification of fake news on Twitter

Shivani S Nikam, R. Dalvi
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引用次数: 9

Abstract

Along with the advancement of the world wide web, the rise and far reaching appropriation of the social site initiative have distorted the manner in which news is shaped and distributed. News has gotten quicker, less expensive and effectively available among web based life. This modify has joined a few hindrances also. Specifically, flabbergasting content, for example, fake news made by online networking clients, is getting progressively perilous. The fake news issue, in spite of being presented just because as of late, has become a significant examination theme because of the high substance of online networking. Writing fake remarks and news via web-based networking media is simple for clients. The primary test is to decide the distinction among genuine and fake news. We developed a method for the fake news classification on twitter. Web- based GUI is developed for the fake news classification system to categorize the tweets as fake or genuine. We develop a machine learning program to identify fake news by comparing tweets with genuine sources. Naive bayes and passive aggressive machine learning algorithms are estimated with TF-IDF feature extraction method.
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基于机器学习算法的Twitter假新闻分类模型
随着万维网的进步,社交网站的兴起和影响深远的挪用已经扭曲了新闻塑造和传播的方式。在以网络为基础的生活中,新闻变得更快、更便宜、更有效。这种修改也加入了一些障碍。具体来说,令人瞠目的内容,比如网络客户端制造的假新闻,正变得越来越危险。尽管假新闻问题只是因为最近才出现,但由于网络的高度实质性,它已成为一个重要的审查主题。通过网络媒体撰写虚假评论和新闻对客户来说很简单。主要的测试是判断真假新闻的区别。我们开发了一种在twitter上对假新闻进行分类的方法。针对假新闻分类系统,开发了基于Web的图形用户界面,对推文进行真假分类。我们开发了一个机器学习程序,通过比较推文和真实消息来源来识别假新闻。采用TF-IDF特征提取方法对朴素贝叶斯和被动攻击机器学习算法进行估计。
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