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Inferring Motif-Based Diffusion Models for Social Networks

机译:用于社交网络的基于主题的基于主题的扩散模型

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Existing diffusion models for social networks often assume that the activation of a node depends independently on their parents' activations. Some recent work showed that incorporating the structural and behavioral dependency among the parent nodes allows more accurate diffusion models to be inferred. In this paper, we postulate that the latent temporal activation patterns (or motifs) of nodes of different social roles form the underlying information diffusion mechanisms generating the information cascades observed over a social network. We formulate the inference of the temporal activation motifs and a corresponding motif-based diffusion model under a unified probabilistic framework. A two-level EM algorithm is derived so as to infer the diffusion-specific motifs and the diffusion probabilities simultaneously. We applied the proposed model to several real-world datasets with significant improvement on modelling accuracy. We also illustrate how the inferred motifs can be interpreted as the underlying mechanisms causing the diffusion process to happen in different social networks.
机译:社交网络的现有扩散模型通常认为节点的激活在其父母的激活上独立取决于它们。最近的一些工作表明,父节点之间的结构和行为依赖性允许推断更准确的扩散模型。在本文中,我们假设不同社会角色的节点的潜在时间激活模式(或主题)形成产生通过社交网络观察到的信息级联的底层信息扩散机制。我们在统一的概率框架下制定时间激活图案的推断和基于相应的基于主题的扩散模型。导出了两级EM算法,以便同时推断出漫射特定的图案和扩散概率。我们将建议的模型应用于几个现实世界数据集,具有显着提高建模精度。我们还说明了推断的主题如何解释为导致扩散过程发生在不同的社交网络中的基础机制。

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