Nirav Shah Minal, Ganatra Amit
Research Scholar, Department of Computer Science, CSPIT, CHARUSAT, Charotar University of Science and Technology, Changa, Gujarat 388421 India.
Provost, Parul University, P.O.Limda, Ta.Waghodia, Vadodara, Gujarat 391760 India.
Soc Netw Anal Min. 2022;12(1):168. doi: 10.1007/s13278-022-00995-5. Epub 2022 Nov 14.
Emerging of social media creates inconsistencies in online news, which causes confusion and uncertainty for consumers while making decisions regarding purchases. On the other hand, in existing studies, there is a lack of empirical and systematic examination observed in terms of inconsistency regarding reviews. The spreading of fake news and disinformation on social media platforms has adverse effects on stability and social harmony. Fake news is often emerging and spreading on social media day by day. It results in influencing or annoying and also misleading nations or societies. Several studies aim to recognize fake news from real news on online social media platforms. Accurate and timely detection of fake news prevents the propagation of fake news. This paper aims to conduct a review on fake news detection models that is contributed by a variety of machine learning and deep learning algorithms. The fundamental and well-performing approaches that existed in the past years are reviewed and categorized and described in different datasets. Further, the dataset utilized, simulation platforms, and recorded performance metrics are evaluated as an extended review model. Finally, the survey expedites the research findings and challenges that could have significant implications for the upcoming researchers and professionals to improve the trust worthiness of automated fake news detection models.
社交媒体的兴起导致在线新闻出现不一致的情况,这在消费者做出购买决策时造成了困惑和不确定性。另一方面,在现有研究中,对于评论的不一致性缺乏实证和系统的考察。社交媒体平台上假新闻和虚假信息的传播对社会稳定与和谐产生不利影响。假新闻在社交媒体上日益涌现和传播,它会影响或困扰甚至误导国家或社会。多项研究旨在在在线社交媒体平台上从真实新闻中识别出假新闻。准确及时地检测假新闻可防止其传播。本文旨在对由各种机器学习和深度学习算法促成的假新闻检测模型进行综述。回顾并分类过去几年存在的基本且性能良好的方法,并在不同数据集中进行描述。此外,对所使用的数据集、模拟平台以及记录的性能指标进行评估,作为扩展的综述模型。最后,该综述梳理了研究结果和挑战,这可能会对未来的研究人员和专业人士产生重大影响,以提高自动假新闻检测模型的可信度。