Fake News Detection Using Machine Learning Methods

IF 2.2 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS
Data Pub Date : 2021-04-05 DOI:10.1145/3460620.3460753
Arun Nagaraja, Soumya K N, Anubhav Sinha, Jain Vinay RAJENDRA KUMAR, Prajwal S Nayak
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引用次数: 6

Abstract

The paper is about the detection of unauthenticated news using Machine-learning methods with different algorithms. There is lot of scope to check the reality of the news received from various sources like websites, blogs, e-content. To identify the fake news, there is a need of some application in real time. Many methods were proposed earlier to observe fake news such as style-based, propagation-based and user-based. Automatic fake news detection application can be generated using natural language processing, information retrieval techniques, as well as graph theory. Language modeling is used to predict the missing or next word in a sentence based on the context. It is believed that mainstream media platforms are publishing fake news to grasp the attention of readers; most likely, it is done to increase the number of visitors on that particular page so that with an increasing number of visitors the page could claim more advertisement. This paper proposes an efficient method to detect fake news with better accuracy by using the available data set to detect the news is FAKE or REAL. Various methods are used for collecting the data and the data mining techniques are applied to clean and visualize it. Data mining helps to differentiate between the qualities of data depending upon its properties. The performance of detecting news only from the body of news is not sufficient but also social engagements should be considered. The objective of the work is to provide end-users with a robust solution so that they can figure out phishy and misguiding information. This technique combines the title and the body of the news to predict fake news more efficiently. The application is concerned with finding a result that could be used to identify fake news to help users.
使用机器学习方法检测假新闻
本文是关于使用不同算法的机器学习方法检测未经认证的新闻。有很多地方可以检查从网站、博客、电子内容等各种来源收到的新闻的真实性。为了识别假新闻,需要一些实时应用程序。之前提出了许多观察假新闻的方法,如基于风格、基于传播和基于用户。自动假新闻检测应用程序可以使用自然语言处理,信息检索技术,以及图论生成。语言建模用于根据上下文预测句子中缺失的单词或下一个单词。认为主流媒体平台发布假新闻是为了抓住读者的注意力;最有可能的是,这样做是为了增加该特定页面上的访问者数量,以便随着访问者数量的增加,该页面可以要求更多的广告。本文提出了一种有效的检测假新闻的方法,通过使用可用的数据集来检测新闻是fake还是REAL。使用各种方法收集数据,并应用数据挖掘技术对数据进行清理和可视化。数据挖掘有助于根据数据的属性区分数据的质量。仅从新闻主体中发现新闻的表现是不够的,还应考虑社会参与。这项工作的目标是为最终用户提供一个健壮的解决方案,以便他们能够找出不真实和误导性的信息。这种技术结合了新闻的标题和正文,可以更有效地预测假新闻。该应用程序关注的是找到一个可以用来识别假新闻的结果,以帮助用户。
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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来源期刊
Data
Data Decision Sciences-Information Systems and Management
CiteScore
4.30
自引率
3.80%
发文量
0
审稿时长
10 weeks
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