Sinhala Language Fake News Detection In Social Media Using Autoencoder-Based Method

Rahul Adihetti, S. Jayalal
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Abstract

The spread of fake news in the social media has grown significantly over the past few years. According to the New York Times, fake news is defined as “made-up articles meant to deceive.” Additionally, the way they are released is almost identical to that of conventional news organizations. The issue is that a significant number of news outlets outside the major and reliable ones are disseminating unreliable information. This problem is exacerbated by the ease with which anything can be published from anywhere on well-known social networking and social media platforms. People can use this to their advantage by disseminating any type of message on various social networking sites to accomplish their objectives. In the Sri Lankan context, content posted in Sinhala greatly impacts fake news in Sri Lanka. Because utilizing the Sinhala language to describe emotions and feelings makes it easier to connect with Sinhala-speaking people than using content that has been published in other languages, like English. The use of Sinhala on social media has grown over the past few years. Additionally, as the use of the Sinhala language expanded, so did the number of occurrences of fake news. Based on the literature, approaches to identifying fake news depend on the features of the news content. Therefore, this research proposed an autoencoder-based method for Sinhala fake news detection, which is an unsupervised method. The method uses Text, User, Propagation, and Image features from the news content. And also, this research found the best feature combination to detect Sinhala language fake news content, which is a combination of Text, User, and Image features. The method gained an accuracy of 98% and 88% in Precision, Recall, and F1 Score by outperforming other existing anomaly detection methods. The main stakeholder of this study was fact-checking organizations in Sri Lanka.
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基于自编码器的社交媒体僧伽罗语假新闻检测方法
假新闻在社交媒体上的传播在过去几年里显著增长。据《纽约时报》报道,假新闻被定义为“旨在欺骗的编造文章”。此外,它们的发布方式几乎与传统新闻机构相同。问题是,除了主要可靠的新闻媒体外,还有相当多的新闻媒体在传播不可靠的信息。在知名的社交网络和社交媒体平台上,任何东西都可以轻易地从任何地方发布,这加剧了这个问题。人们可以利用这一点,通过在各种社交网站上传播任何类型的信息来实现他们的目标。在斯里兰卡,僧伽罗语发布的内容对斯里兰卡的假新闻影响很大。因为使用僧伽罗语来描述情感和感受比使用其他语言(如英语)出版的内容更容易与说僧伽罗语的人建立联系。在过去的几年里,社交媒体上使用僧伽罗语的人越来越多。此外,随着僧伽罗语使用的扩大,假新闻的出现次数也在增加。从文献来看,识别假新闻的方法取决于新闻内容的特征。因此,本研究提出了一种基于自编码器的僧伽罗语假新闻检测方法,这是一种无监督的方法。该方法使用新闻内容中的文本、用户、传播和图像特征。此外,本研究还发现了检测僧伽罗语假新闻内容的最佳特征组合,即文本、用户和图像特征的组合。该方法在Precision、Recall和F1 Score方面的准确率分别为98%和88%,优于其他现有的异常检测方法。本研究的主要利益相关者是斯里兰卡的事实核查组织。
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