假新闻分类的机器学习技术

Swatej Patil, Suyog Vairagade, Dipti Theng
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引用次数: 15

摘要

像Twitter、Instagram和Facebook这样的社交网站已经成为我们日常生活中必不可少的一部分,但社交媒体有其自身的优点和缺点。很多时候,这些社交网络平台被用来传播假新闻或不正确的信息,对这类内容的分类和分类的需求越来越大。因此,我们探索了一种结合机器学习方法的假新闻分类新技术。本文描述了一种方法的发展,该方法提供TF-IDF矢量器来分类哪些新闻是合法的,哪些是欺诈的。使用来自Kaggle的数据集执行实现。结果表明,该方法是有效的。
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Machine Learning Techniques for the Classification of Fake News
Social Networking sites like Twitter, Instagram, and Facebook have become an essential part of our daily lives, but social media comes with its own advantages and disadvantages. Many of the time, these social networking platforms are used to distribute fake news or incorrect information, and there is a growing demand for classification and categorization of this type of content. As a result, we have explored a novel technique for classifying fake news that incorporates machine learning methods. This paper describes the development of a method that provides the TF-IDF Vectorizer to classify which news is legitimate and which is fraudulent. Implementation is performed using datasets from Kaggle. The results indicate that this method performs effectively.
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