印度数字网络虚假新闻预测的刚度分析

G. Sreeraag, P. Shynu
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引用次数: 2

摘要

社交网络对世界各地人们的个人生活和职业生活产生了重大影响。由于新冠肺炎疫情推动了人们对数字媒体的使用,近年来,假新闻和假评论对社会的影响越来越大。这项研究展示了如何使用刚度指数来模拟假新闻在印度各州的传播。我们证明,假新闻通过在线社交网络传播的速度随着刚度指数的增加而增加。我们对印度所有邦进行了刚度分析,以评估虚假信息在每个邦的传播情况。传统SIR模型的刚度分析是描述社交网络中谣言传播的一种广泛使用的方法,可以解释和说明我们的命题。对比新冠疫情前后印度的僵硬度指数,我们社会中假新闻的增多也是合理的。这项研究为政府和政策制定者提供了更全面的了解早期干预的价值,以打击通过数字媒体传播的虚假信息。
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Stiffness Analysis for the Prediction of Fake News through Online Digital Networks in India
Social networks have had a significant impact on people's personal and professional life all around the world. Since the COVID-19 pandemic has boosted the use of digital media among people, fake news and reviews have had a stronger impact on society in recent years. This study demonstrates how the stiffness index may be used to model the spread of fake news in Indian states. We demonstrate that the speed at which fake news circulates through online social networks increases with a stiffness index. We conducted a stiffness analysis for all Indian states to assess the spread of fake information in each Indian state. The stiffness analysis of the conventional SIR model, one of the widely used approaches to describe the propagation of rumors in social networks, serves as an explanation and illustration of our proposition. The rise in fake news in our society is also justified by a comparison of the stiffness index for India before and after the COVID-19 outbreak. The study provides governments and policymakers with a more comprehensive understanding of the value of early intervention to combat the spread of false information via digital media.
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