Topological data analysis has recently been applied to the study of dynamic networks. In this context, an algorithm was introduced and helps, among other things, to detect early warning signals of abnormal changes in the dynamic network under study. However, the complexity of this algorithm increases significantly once the database studied grows. In this paper, we propose a simplification of the algorithm without affecting its performance. We give various applications and simulations of the new algorithm on some weighted networks. The obtained results show clearly the efficiency of the introduced approach. Moreover, in some cases, the proposed algorithm makes it possible to highlight local information and sometimes early warning signals of local abnormal changes.
翻译:最近对动态网络的研究应用了地形数据分析,在这方面,引入了算法,除其他外,帮助探测所研究的动态网络异常变化的预警信号,然而,一旦数据库研究增加,这种算法的复杂性就会大大增加。在本文件中,我们提议简化算法,但不影响其性能。我们在某些加权网络上应用和模拟新的算法。所获得的结果清楚地表明了采用的方法的效率。此外,在某些情况下,拟议的算法使得能够突出当地信息,有时是当地异常变化的预警信号。