分析和识别新冠肺炎疫情期间虚假信息扩散预测的关键证据——以个案研究为例

Deepika Varshney, D. Vishwakarma
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引用次数: 3

摘要

在目前的情况下,社交媒体平台是分享个人观点和想法的有效方式之一。用户可以自由地分享他们对一个事件/情况的想法。如果社交媒体平台被恶意利用,传播虚假信息,在公众中制造混乱/混乱,这将大大降低用户体验,这可能是社会的诅咒。在当前的大流行中,许多人都关注与冠状病毒治疗有关的任何新闻文章。恶意用户以此为契机传播假新闻,以制造公众混淆或谋取金钱利益,这一点至关重要。所提出的技术是利用上下文知识、距离度量和单词相似度来学习与索赔相关的前10个谷歌搜索结果的新闻文章标题及其内容的关键证据,并从应用的角度考虑COVID-19作为特殊案例研究之一。本文提出了一种新的虚假信息预测方案,并生成了一个covid - fakenews数据集,用于进一步分析和评估我们的模型。实验结果表明,所提出的智能策略在预测虚假信息方面取得了良好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysing and Identifying Crucial Evidences for the prediction of False Information proliferated during COVID-19 Outbreak: A Case Study
In the current scenario social media platforms are one the efficient way to share opinions and thoughts of an individual. User can freely share their thoughts on an event/ situation. This can be a curse for the society if social media platform is utilized with some bad intention to spread false information and create chaos/ confusion among public which greatly degrades user experience. In the current pandemic many people have their eye on any news article related to corona cure. Malicious users take this as an opportunity to spread fake news in order to create confusion among public or some monetary benefits, the detection of which is of paramount importance. The proposed technique is leverages to learn crucial evidences based on Context Knowledge, Distance Metric and Word Resemblance with respect to news article headline and its content concerning top 10 google search results related to the claim, where considering COVID-19 as one of the special case studies from the application perspective. This paper proposed a novel scheme for the prediction of false information and generated a covidfakenews dataset that further be utilized for the analysis and evaluation of our model. The results reveals that the proposed intelligent strategy gives promising experimental results and quite effective in predicting False information.
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