Graph diffusion problems such as the propagation of rumors, computer viruses, or smart grid failures are ubiquitous and societal. Hence it is usually crucial to identify diffusion sources according to the current graph diffusion observations. Despite its tremendous necessity and significance in practice, source localization, as the inverse problem of graph diffusion, is extremely challenging as it is ill-posed: different sources may lead to the same graph diffusion patterns. Different from most traditional source localization methods, this paper focuses on a probabilistic manner to account for the uncertainty of different candidate sources. Such endeavors require overcoming challenges including 1) the uncertainty in graph diffusion source localization is hard to be quantified; 2) the complex patterns of the graph diffusion sources are difficult to be probabilistically characterized; 3) the generalization under any underlying diffusion patterns is hard to be imposed. To solve the above challenges, this paper presents a generic framework: Source Localization Variational AutoEncoder (SL-VAE) for locating the diffusion sources under arbitrary diffusion patterns. Particularly, we propose a probabilistic model that leverages the forward diffusion estimation model along with deep generative models to approximate the diffusion source distribution for quantifying the uncertainty. SL-VAE further utilizes prior knowledge of the source-observation pairs to characterize the complex patterns of diffusion sources by a learned generative prior. Lastly, a unified objective that integrates the forward diffusion estimation model is derived to enforce the model to generalize under arbitrary diffusion patterns. Extensive experiments are conducted on 7 real-world datasets to demonstrate the superiority of SL-VAE in reconstructing the diffusion sources by excelling other methods on average 20% in AUC score.
翻译:传播流言、计算机病毒或智能电网故障等图象扩散问题无处不在,而且具有社会性。因此,根据目前的图表扩散观测,通常必须查明扩散源。尽管在实际中,源的本地化是图扩散的反面问题,但其难度极大:不同的来源可能导致相同的图扩散模式。与大多数传统来源的本地化方法不同,本文件侧重于一种概率化方法,以说明不同候选源的不确定性。这种努力需要克服挑战,包括:(1) 难以量化图形传播源本地化的不确定性;(2) 图形传播源的复杂模式难以具有概率特征;(3) 任何基本传播模式下的源地化是很难被强加的。为了解决上述挑战,本文件提出了一个通用框架:源本地化 Variational Aute Enccoder (SL-VAVAE) 用于将扩散源定位在任意扩散模式下。我们建议一种可比较性模型将前扩散模型模型与深度的源化模型化模型化模型一起加以量化;(2) 图表传播源的复杂模式很难具有概率特征特征特征特征; 将Slationalalalalalalalalalal-salationalalal lieval livalation livalation livald view view 用于在Sildal view view view view view view view view 20 view views violviews view views viewmmlviews violview 。