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Observing Behaviors of Information Diffusion Models for Diverse Topics of Posts on VK

机译:VK上不同主题的信息扩散模型的行为观察

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The way information spreads through society has changed significantly over the past decade with the advent of online social networking. It is also observed that users have distinct behaviors, i.e., the topics of conversations shared among users, based on which social media platforms they use. However, many previous approaches for predicting information spreading in social networks do not consider this versatility. In this paper, we examine Independent Cascade (IC) information diffusion model which assumes that each node independently influences its neighboring nodes. We show the results of applying IC model to the biggest Russian social network Vkontakte (VK). We first apply the model to synthetic networks and compare the results with the real networks extracted for different topics. The results supports our hypothesis that the behavior of information diffusion in social media is different based on the topics shared. Our results also show that IC model does not properly describe the diffusion processes in VK.
机译:在过去的十年中,随着在线社交网络的出现,信息在社会中的传播方式发生了巨大变化。还观察到,用户具有不同的行为,即,基于用户所使用的社交媒体平台,在用户之间共享的对话主题。但是,许多先前的预测社交网络中信息传播的方法都没有考虑这种多功能性。在本文中,我们研究了独立级联(IC)信息扩散模型,该模型假定每个节点独立地影响其相邻节点。我们展示了将IC模型应用于最大的俄罗斯社交网络Vkontakte(VK)的结果。我们首先将该模型应用于综合网络,然后将结果与针对不同主题提取的实际网络进行比较。结果支持我们的假设,即基于共享主题,社交媒体中信息传播的行为是不同的。我们的结果还表明,IC模型不能正确描述VK中的扩散过程。

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