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Inferring links in cascade through hawkes process based diffusion model

机译:通过基于Hawkes过程的扩散模型推断级联中的链接

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Data of information cascade in social network is always incomplete with missing information of the links between nodes. This paper proposes a generative probabilistic model to infer links using the observation data. Comparing to existing methods, we take consideration of differences of links. And we are also in view of recurrent events and influence from outside of the cascade. Our hawkes process based diffusion model (HPBDM) is testified to precede the prior models in the aspect of inferring links on synthetic data and real data. We also modify the HPBDM by adding time threshold and build up modified hawkes process based diffusion model (MHPBDM). Conducting experiment on real data with MHPBDM, we discover that it is more suitable for some kinds of information whose time interval for information cascade is long.
机译:社交网络中信息级联的数据总是不完整的,缺少节点之间链接的信息。本文提出了一种生成概率模型,以使用观测数据来推断链接。与现有方法相比,我们考虑了链接的差异。而且,我们还考虑到反复发生的事件以及来自级联外部的影响。经过验证,我们的霍克斯过程基扩散模型(HPBDM)在推断合成数据和真实数据的链接方面要优于先前的模型。我们还通过添加时间阈值来修改HPBDM,并建立了基于霍克斯过程的改进扩散模型(MHPBDM)。利用MHPBDM对真实数据进行实验,我们发现它更适合于信息级联时间间隔较长的某些信息。

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