Graph link prediction is an important task in cyber-security: relationships between entities within a computer network, such as users interacting with computers, or system libraries and the corresponding processes that use them, can provide key insights into adversary behaviour. Poisson matrix factorisation (PMF) is a popular model for link prediction in large networks, particularly useful for its scalability. In this article, PMF is extended to include scenarios that are commonly encountered in cyber-security applications. Specifically, an extension is proposed to explicitly handle binary adjacency matrices and include known categorical covariates associated with the graph nodes. A seasonal PMF model is also presented to handle seasonal networks. To allow the methods to scale to large graphs, variational methods are discussed for performing fast inference. The results show an improved performance over the standard PMF model and other statistical network models.
翻译:图表链接预测是网络安全的一项重要任务:计算机网络内实体之间的关系,例如用户与计算机或系统图书馆的相互作用和使用它们的相应程序,可以提供对对手行为的关键洞察力。 Poisson 矩阵因子化(PMF)是大型网络连接预测的流行模型,对于其可缩放性特别有用。在本条中,PMF被扩大,以包括网络安全应用中常见的情景。具体地说,建议扩大范围,以明确处理双相邻矩阵,并包括与图形节点相关的已知绝对共变体。还介绍了季节性PMF模型,以便处理季节性网络。为了能够将方法缩到大图,讨论了快速推断的变式方法。结果显示比标准 PMF模型和其他统计网络模型的性能有所改善。