基于Lazy Multivariate Hawkes过程的稀疏信息扩散模型

Maximilian Nickel, Matt Le
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引用次数: 11

摘要

多元霍克斯过程(MHPs)是一类重要的时间点过程,它在理解和预测社会信息系统方面取得了关键进展。然而,由于它们对时间依赖性的复杂建模,mhp已被证明是非常难以扩展的,这限制了它们在相对较小的领域的应用。在这项工作中,我们提出了一种新的模型和计算方法来克服这一重要的限制。通过利用现实世界扩散过程中的特征稀疏模式,我们表明我们的方法允许计算MHP的精确似然和梯度-独立于底层网络的环境维度。我们在合成和真实世界的数据集上展示了我们的方法不仅可以获得最先进的建模结果,而且还可以在稀疏事件序列上提高多个数量级的运行时性能。结合易于解释的潜在变量和影响结构,这使我们能够以以前无法达到的规模分析网络中的扩散过程。
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Modeling Sparse Information Diffusion at Scale via Lazy Multivariate Hawkes Processes
Multivariate Hawkes Processes (MHPs) are an important class of temporal point processes that have enabled key advances in understanding and predicting social information systems. However, due to their complex modeling of temporal dependencies, MHPs have proven to be notoriously difficult to scale, what has limited their applications to relatively small domains. In this work, we propose a novel model and computational approach to overcome this important limitation. By exploiting a characteristic sparsity pattern in real-world diffusion processes, we show that our approach allows to compute the exact likelihood and gradients of an MHP – independently of the ambient dimensions of the underlying network. We show on synthetic and real-world datasets that our method does not only achieve state-of-the-art modeling results, but also improves runtime performance by multiple orders of magnitude on sparse event sequences. In combination with easily interpretable latent variables and influence structures, this allows us to analyze diffusion processes in networks at previously unattainable scale.
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