Reel or Real – Survey of Machine Learning to Adversarial Machine Learning Algorithms for Fake Content Detection in the Education Domain

Janice Marian Jockim, M. K, Karthika S
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Abstract

The issue of fake news has developed a lot quicker in the ongoing years. Online media has drastically changed its scope and effect all in all. On one hand, it's easy, and simple availability with a quick portion of data draws more consideration of individuals to peruse news from it. Then again, it empowers widespread of fake news, which are only false data to misdirect individuals. With 14 percent of individuals conceding that they have purposely shared a fake political report on the web, unmistakably these false reports will keep on picking up footing insofar as individuals are as yet ready to share them on the web. Subsequently, computerizing counterfeit news recognition has gotten urgent to keep up strong on the web and web-based media. There have been many machine learning approaches implemented to address and solve this problem. Likewise, this project, given a certain number of instances shared publicly on a social media platform, helps in tracing the instances one by one and identifies the fake news using supervised learning algorithms. It then generates news implying mixed viewpoints by applying adversarial machine learning algorithm and helps in creating a diversion. Thus, it reduces the impact created by misleading information. The prime focus of this paper is to compare the various existing Machine Learning, Deep Learning, Adversarial Machine Learning algorithms which will aid a researcher to understand the fake content detection spreading in the social media which are related to the educational domain. This survey paper will be useful for students during pandemic and crises like the covid-19 pandemic.
卷轴还是真实——机器学习到对抗性机器学习算法在教育领域虚假内容检测的综述
近年来,假新闻的问题发展得更快了。总之,网络媒体极大地改变了它的范围和影响。一方面,它很容易,并且快速获取数据的简单可用性会吸引更多的人考虑从中阅读新闻。不过,它也助长了假新闻的传播,而假新闻只是误导个人的虚假数据。有14%的人承认他们故意在网上分享虚假的政治报道,毫无疑问,只要人们准备好在网上分享这些虚假报道,这些虚假报道就会继续站稳脚跟。因此,计算机化的假新闻识别在网络和网络媒体上已经迫在眉睫。已经实现了许多机器学习方法来处理和解决这个问题。同样,该项目在社交媒体平台上公开分享一定数量的实例,帮助逐一追踪实例,并使用监督学习算法识别假新闻。然后,它通过应用对抗性机器学习算法生成隐含混合观点的新闻,并有助于转移注意力。因此,它减少了误导性信息造成的影响。本文的主要重点是比较各种现有的机器学习,深度学习,对抗性机器学习算法,这将有助于研究人员了解与教育领域相关的社交媒体中传播的虚假内容检测。这份调查报告将在大流行和covid-19大流行等危机期间对学生有用。
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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