This paper proposes different methods to consistently detect multiple breaks in copula-based dependence measures, mainly focusing on Spearman's $\rho$. The leading model is a factor copula model due to its usefulness for analyzing data in high dimensions. Starting with the classical binary segmentation, also the more recent wild binary segmentation (WBS) and a procedure based on an information criterion are considered. For all procedures, consistency of the estimators for the location of the breakpoints as well as the number of breaks is proved. Monte Carlo simulations indicate that WBS performs best in many, but not in all, situations. A real data application on recent Euro Stoxx 50 data reveals the usefulness of the procedures.
翻译:本文件建议采用不同方法,以一致的方式检测以椰干为基础的依赖性措施的多重间断,主要侧重于Spearman的$\rho$。主要模型是一种因子合金模型,因为它对分析高维度数据有用。从传统的二元分解开始,还考虑到最近的野生二进制分解和基于信息标准的程序。对于所有程序,都证明了断裂点位置和间断次数的测算员的一致性。蒙特卡洛模拟显示,WBS在许多情况下表现最佳,但并非在所有情况下都是如此。关于最近的EuroStoxx 50数据的真正数据应用显示了程序的有用性。