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Stance detection with BERT embeddings for credibility analysis of information on social media

机译:使用BERT Embeddings的立场检测,以便于社交媒体信息的信誉分析

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The evolution of electronic media is a mixed blessing. Due to the easy access, low cost, and faster reach of the information, people search out and devour news from online social networks. In contrast, the increasing acceptance of social media reporting leads to the spread of fake news. This is a minacious problem that causes disputes and endangers the societal stability and harmony. Fake news spread has gained attention from researchers due to its vicious nature. proliferation of misinformation in all media, from the internet to cable news, paid advertising and local news outlets, has made it essential for people to identify the misinformation and sort through the facts. Researchers are trying to analyze the credibility of information and curtail false information on such platforms. Credibility is the believability of the piece of information at hand. Analyzing the credibility of fake news is challenging due to the intent of its creation and the polychromatic nature of the news. In this work, we propose a model for detecting fake news. Our method investigates the content of the news at the early stage i.e., when the news is published but is yet to be disseminated through social media. Our work interprets the content with automatic feature extraction and the relevance of the text pieces. In summary, we introduce stance as one of the features along with the content of the article and employ the pre-trained contextualized word embeddings BERT to obtain the state-of-art results for fake news detection. The experiment conducted on the real-world dataset indicates that our model outperforms the previous work and enables fake news detection with an accuracy of 95.32%.
机译:电子媒体的演变是一个混合的祝福。由于易于访问,低成本和信息的速度更快,人们搜索和吞噬来自在线社交网络的新闻。相比之下,越来越多的社交媒体报告的接受程度导致假新闻的传播。这是一个致命的致命问题,纠纷危及社会稳定和和谐。假新闻传播由于其恶性自然而受到研究人员的关注。所有媒体中的误导扩散,从互联网到有线新闻,付费广告和当地新闻网点,使人们识别错误信息并通过事实排序。研究人员正在努力分析信息的可信度并对这些平台进行缩小的虚假信息。可信度是手头信息的可信度。分析假新闻的可信度由于其创造的意图和新闻的多色性质而挑战。在这项工作中,我们提出了一种检测假新闻的模型。我们的方法在早期的情况下调查了新闻的内容,即新闻发布,但尚未通过社交媒体传播。我们的工作解释了自动特征提取和文本件的相关性的内容。总之,我们将姿态引入其中一个特征以及文章的内容,并采用预先训练的上下文化词嵌入式BERT,以获得假新闻检测的最先进的结果。在现实世界数据集上进行的实验表明,我们的模型优于上一个工作,并使假新闻检测具有95.32%的准确性。

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