Structural breaks have been commonly seen in applications. Specifically for detection of change points in time, research gap still remains on the setting in ultra high dimension, where the covariates may bear spurious correlations. In this paper, we propose a two-stage approach to detect change points in ultra high dimension, by firstly proposing the dynamic titled current correlation screening method to reduce the input dimension, and then detecting possible change points in the framework of group variable selection. Not only the spurious correlation between ultra-high dimensional covariates is taken into consideration in variable screening, but non-convex penalties are studied in change point detection in the ultra high dimension. Asymptotic properties are derived to guarantee the asymptotic consistency of the selection procedure, and the numerical investigations show the promising performance of the proposed approach.
翻译:通常在应用中可以看到结构断裂。 具体地说,为探测时间变化点,研究差距仍然存在于超高维度的设定上, 共变体可能具有虚假的关联性。 在本文件中,我们提出了检测超高维度变化点的两阶段方法,首先提出动态的、称为当前相关筛选法以减少输入层面,然后在群体变量选择框架内检测可能的变更点。 不仅在变量筛选中考虑到超高维共变体之间的虚假关联性,而且在超高维度变化点检测中研究非通融性处罚。 生成非抽调特性是为了保证选择程序的无症状一致性,而数量调查显示了拟议方法的有希望表现。