微信网络政治网页传播建模

Liang Liu, Bin Chen, W. Jiang, X. Qiu, Lingnan He, Kaisheng Lai
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引用次数: 2

摘要

现代社交媒体极大地促进了人们获取和消费信息的能力和效率,也有意无意地传播了政治谣言和民族主义情绪。本文研究了政治网页在b微信网络中传播的建模问题。首先,收集了大量散布在微信的网页,其中涉及的用户超过两亿。广泛传播的网页被摘录并分为两类:政治和非政治网页。然后从级联大小、寿命、宽度、高度、平均深度和平均路径长度等方面对这些网页的拓扑和时间特征进行了分析和比较。从观看延迟、分享延迟和分享概率三个方面考察了参与用户行为的性质。最后,利用未知观点共享删除模型对政治网页的动态扩散过程进行表征。该模型由b微信网络中扩散的政治网页的经验观察驱动和验证。我们的研究结果有助于预测甚至调节政治谣言和民族主义情绪。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling of political web pages spreading in WeChat networks
Modern social media has greatly facilitated the ability and efficiency of people to access and consume information, as well as intentionally or unintentionally spread political rumors and nationalist sentiments. This paper addresses the problem of modeling of political web pages spreading in WeChat networks. At first, a large number of web pages diffused in WeChat are collected, in which more than two hundred million users are involved. The widely disseminated pages are extracted and divided into two categories: political and non-political pages. Then the topological and temporal features of these web pages are analyzed and compared with respect to cascade size, life span, width, height, average depth, and average path length. The properties of involved user's behaviors are examined in terms of viewing delay, sharing delay, and sharing probability. At last, the Unknown-View-Share-Removed (UVSR) model is employed to characterize the dynamic diffusion process of political web pages. The model is driven and validated by the empirical observations of political web pages diffused in WeChat networks. Our findings contribute to predicting and even regulating political rumors and nationalist sentiments.
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