深度学习和机器学习方法在新冠肺炎疫情前后假新闻检测中的系统研究

Rajshree Varma, Yugandhara Verma, P. Vijayvargiya, Prathamesh P. Churi
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引用次数: 22

摘要

在线通信技术的快速发展和指尖接入互联网导致假新闻通过新闻频道、自由记者和网站以低成本迅速传播到全球受众。在2019年冠状病毒病(COVID-19)大流行期间,个人受到这些虚假和潜在有害的说法和故事的影响,这可能会损害疫苗接种过程。心理学研究表明,人类识破欺骗的能力只比偶然略强;因此,越来越有必要认真考虑制定自动化策略,以打击以惊人的速度在这些平台上传播的假新闻。本文通过探索大流行前后的各种机器学习和深度学习技术,系统地回顾了现有的假新闻检测技术,据作者所知,这是以前从未做过的。关于假新闻检测的详细文献综述分为三个主要部分。作者检索了不迟于2017年关于深度学习和机器学习的假新闻检测方法的论文。这些论文最初是通过谷歌学术平台搜索的,并经过了质量审查。作者将“Scopus”和“Web of Science”作为质量索引参数。探讨了目前假新闻检测技术的所有研究空白和现有数据库、数据预处理、特征提取技术和评估方法,并使用表格、图表和树进行了说明。本文分为机器学习和深度学习两种方法,以提供更好的理解和明确的目标。接下来,鉴于对现有模型进行详细和彻底的分析的相关性和紧迫性,作者提出了哪种方法更好以及研究人员面临的未来研究趋势、问题和挑战的观点。本文还深入研究了COVID-19期间的假新发现,可以推断,研究和建模正在转向使用集成方法。独创性/价值本研究还确定了研究人员用于评估大流行新闻有效性的几种新的基于网络的自动化方法,这些方法已被证明是成功的,尽管目前报道的准确性尚未达到现实世界中的一致水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A systematic survey on deep learning and machine learning approaches of fake news detection in the pre- and post-COVID-19 pandemic
PurposeThe rapid advancement of technology in online communication and fingertip access to the Internet has resulted in the expedited dissemination of fake news to engage a global audience at a low cost by news channels, freelance reporters and websites. Amid the coronavirus disease 2019 (COVID-19) pandemic, individuals are inflicted with these false and potentially harmful claims and stories, which may harm the vaccination process. Psychological studies reveal that the human ability to detect deception is only slightly better than chance; therefore, there is a growing need for serious consideration for developing automated strategies to combat fake news that traverses these platforms at an alarming rate. This paper systematically reviews the existing fake news detection technologies by exploring various machine learning and deep learning techniques pre- and post-pandemic, which has never been done before to the best of the authors’ knowledge.Design/methodology/approachThe detailed literature review on fake news detection is divided into three major parts. The authors searched papers no later than 2017 on fake news detection approaches on deep learning and machine learning. The papers were initially searched through the Google scholar platform, and they have been scrutinized for quality. The authors kept “Scopus” and “Web of Science” as quality indexing parameters. All research gaps and available databases, data pre-processing, feature extraction techniques and evaluation methods for current fake news detection technologies have been explored, illustrating them using tables, charts and trees.FindingsThe paper is dissected into two approaches, namely machine learning and deep learning, to present a better understanding and a clear objective. Next, the authors present a viewpoint on which approach is better and future research trends, issues and challenges for researchers, given the relevance and urgency of a detailed and thorough analysis of existing models. This paper also delves into fake new detection during COVID-19, and it can be inferred that research and modeling are shifting toward the use of ensemble approaches.Originality/valueThe study also identifies several novel automated web-based approaches used by researchers to assess the validity of pandemic news that have proven to be successful, although currently reported accuracy has not yet reached consistent levels in the real world.
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