Motivated by the detection of cascades of defaults in economy, we developed a detection framework for an endogenous spreading based on causal motifs we define in this paper. We assume that the change of state of a vertex can be triggered by an endogenous or an exogenous event, that the underlying network is directed and that times when vertices changed their states are available. In addition to the data of company defaults, we also simulate cascades driven by different stochastic processes on different synthetic networks. We show that some of the smallest motifs can robustly detect endogenous spreading events. Finally, we apply the method to the data of defaults of Croatian companies and observe the time window in which an endogenous cascade was likely happening.
翻译:以发现经济违约的级联为动力,我们开发了基于本文所定义的因果图案的内生扩散检测框架。我们假设,内生或外生事件可以引发顶点状态的改变,基础网络是定向的,以及峰值改变其状态的时期。除了公司违约数据外,我们还模拟不同合成网络上由不同随机过程驱动的内生扩散。我们表明,一些最小的元件可以有力地检测内生扩散事件。最后,我们将这种方法应用于克罗地亚公司违约数据,并观察可能发生内生级联的时间窗口。