Consider each node of a graph to be generating a data stream that is synchronized and observed at near real-time. At a change-point $\tau$, a change occurs at a subset of nodes $C$, which affects the probability distribution of their associated node streams. In this paper, we propose a novel kernel-based method to both detect $\tau$ and localize $C$, based on the direct estimation of the likelihood-ratio between the post-change and the pre-change distributions of the node streams. Our main working hypothesis is the smoothness of the likelihood-ratio estimates over the graph, i.e connected nodes are expected to have similar likelihood-ratios. The quality of the proposed method is demonstrated on extensive experiments on synthetic scenarios.
翻译:将图表的每个节点都视为生成一个在近实时时同步观测的数据流。 在变化点$\tau$上,一个节点$子子出现变化,这影响到相关节点流的概率分布。在本文中,我们提议一种基于内核的新方法,根据对变化后和节点流变化前分布之间概率差数的直接估计,检测$\tau$和本地化$C$。我们的主要工作假设是图上概率差估计数的顺利性,即连接节点的概率差数预计将类似。在对合成情景进行的广泛实验中,可以展示拟议方法的质量。