谣言对社交媒体影响的预测与分析

Jun Yin, Shaowu Liu, Qian Li, Guandong Xu
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引用次数: 2

摘要

谣言作为一种重要的社会传播形式,贯穿了人类的整个进化史。人们恶意传播谣言,以提高认识,诽谤他人或引起恐慌等。为了消除这个问题,许多研究人员求助于检测社交媒体上的谣言。然而,谣言检测不足以消除负面影响,这还需要官方机构提供反驳。在实践中,社交媒体上的谣言数量太大,没有必要去驳斥一些很少或根本没有关注的谣言。因此,我们需要提前评估谣言的影响。本文基于流行谣言强度公式,设计了谣言影响预测模型RISM (rumor Impact on Social Media)来预测新生儿谣言的影响。对今日头条的真实谣言数据进行了大量的数值实验,证明了我们提出的RISM模型的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction and Analysis of Rumour's Impact on Social Media
Rumour, as an important form of social communication, has been run through the whole evolutionary history of mankind. People maliciously disseminate rumours in order to increase awareness, slander others or cause panic, etc. To eliminate this issue, many researchers resort to detecting rumours on social media. However, rumour detection is not sufficient to eliminate the negative impact, which also requires official institutions to provide the refutations. In practice, the number of rumours on social media is too large, there is no need to refute some rumours with little or no concern. Therefore, we need to evaluate the impact of the rumours in advance. In this paper, we devise a rumour influence prediction model RISM (Rumour Impact on Social Media) based on a popular rumour intensity formula to predict the impact of a newborn rumour. Extensive numerical experiments are carried out on the real rumour data that are collected from Toutiao.com, which demonstrate the effectiveness of our proposed RISM model.
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