Estimation of the high-dimensional banded covariance matrix is widely used in multivariate statistical analysis. To ensure the validity of estimation, we aim to test the hypothesis that the covariance matrix is banded with a certain bandwidth under the high-dimensional framework. Though several testing methods have been proposed in the literature, the existing tests are only powerful for some alternatives with certain sparsity levels, whereas they may not be powerful for alternatives with other sparsity structures. The goal of this paper is to propose a new test for the bandedness of high-dimensional covariance matrix, which is powerful for alternatives with various sparsity levels. The proposed new test also be used for testing the banded structure of covariance matrices of error vectors in high-dimensional factor models. Based on these statistics, a consistent bandwidth estimator is also introduced for a banded high dimensional covariance matrix. Extensive simulation studies and an application to a prostate cancer dataset from protein mass spectroscopy are conducted for evaluating the effectiveness of the proposed adaptive tests blue and bandwidth estimator for the banded covariance matrix.
翻译:在多变量统计分析中广泛使用高维带宽共变矩阵的估算。为了确保估算的有效性,我们的目标是测试共变矩阵在高维框架下带带带一定带宽的假设。虽然文献中提出了几种测试方法,但现有测试对于某些具有某些宽度水平的替代品来说只是一些替代方法,而对于其他宽度结构的替代方法则可能并不强大。本文的目的是提议对高维共变变量矩阵的带宽性进行新的测试,这对于具有不同宽度水平的替代品是强大的。提议的新测试还用于测试高维要素模型中误差矢量共变矩阵的带宽结构。根据这些统计数据,还为带宽高维共变矩阵引入了一致带宽度测算器。进行了广泛的模拟研究,并应用蛋白质质质质质谱谱分析的预测性癌症数据集评估拟议调控测试蓝带宽度和带宽度测算器的有效性。