This paper proposes a new test for a change point in the mean of high-dimensional data based on the spatial sign and self-normalization. The test is easy to implement with no tuning parameters, robust to heavy-tailedness and theoretically justified with both fixed-$n$ and sequential asymptotics under both null and alternatives, where $n$ is the sample size. We demonstrate that the fixed-$n$ asymptotics provide a better approximation to the finite sample distribution and thus should be preferred in both testing and testing-based estimation. To estimate the number and locations when multiple change-points are present, we propose to combine the p-value under the fixed-$n$ asymptotics with the seeded binary segmentation (SBS) algorithm. Through numerical experiments, we show that the spatial sign based procedures are robust with respect to the heavy-tailedness and strong coordinate-wise dependence, whereas their non-robust counterparts proposed in Wang et al. (2022) appear to under-perform. A real data example is also provided to illustrate the robustness and broad applicability of the proposed test and its corresponding estimation algorithm.
翻译:本文建议对基于空间标志和自我正常化的高维数据平均值的变化点进行新的测试。 测试在不调整参数的情况下实施是容易的。 测试在严格和理论上合理,在无效和替代品下,固定- 美元和顺序的无源元和无源和无源的无源和无源和无源和无源和无源和无源和无源和无源和无源和无源和无源和无源和无源和无源和无源和无源和无源和无源和无源和无源和无源和无源和无源和无源数据之间, 样本大小为美元; 我们证明固定- 美元无源和无源和无源和无源的无源数据提供更佳近似于有限的样本分布, 因此在测试和基于测试的估算中更可取。 为了估计存在多重变化点时的估计数量和地点,我们建议将固定- 美元零元的无源和无源和无源和无源和无源数据值与种子二元的二元计算法的算法结合。 我们通过数字实验显示空间信号程序对重和有可靠和强的可靠和强的可靠和强协调依赖,,而其无源对应的对应的对应的对应的对应方(2022年) 。我们提供了一个真实数据的例子, 。