Change point detection in time series has attracted substantial interest, but most of the existing results have been focused on detecting change points in the time domain. This paper considers the situation where nonlinear time series have potential change points in the state domain. We apply a density-weighted anti-symmetric kernel function to the state domain and therefore propose a nonparametric procedure to test the existence of change points. When the existence of change points is affirmative, we further introduce an algorithm to estimate the number of change points together with their locations. Theoretical results of the proposed detection and estimation procedures are given and a real dataset is used to illustrate our methods.
翻译:时间序列中的变化点探测引起了很大的兴趣,但大多数现有结果都集中在探测时间域的变化点上。本文考虑了非线性时间序列在州域中具有潜在变化点的情况。我们对州域应用了密度加权反对称内核功能,因此提出了非对称程序来测试变化点的存在。如果存在变化点是肯定的,我们进一步采用算法来估计变化点的数量及其位置。给出了拟议的检测和估计程序的理论结果,并使用真实的数据集来说明我们的方法。