Testing the equality of the covariance matrices of two high-dimensional samples is a fundamental inference problem in statistics. Several tests have been proposed but they are either too liberal or too conservative when the required assumptions are not satisfied which attests that they are not always applicable in real data analysis. To overcome this difficulty, a normal-reference test is proposed and studied in this paper. It is shown that under some regularity conditions and the null hypothesis, the proposed test statistic and a chi-square-type mixture have the same limiting distribution. It is then justified to approximate the null distribution of the proposed test statistic using that of the chi-square-type mixture. The distribution of the chi-square-type mixture can be well approximated using a three-cumulant matched chi-square-approximation with its approximation parameters consistently estimated from the data. The asymptotic power of the proposed test under a local alternative is also established. Simulation studies and a real data example demonstrate that in terms of size control, the proposed test outperforms the existing competitors substantially.
翻译:为克服这一困难,本文件提出并研究了正常参考测试,以克服这一困难。据证明,在某些常规条件和无效假设下,拟议测试统计数据和基方类型混合物的分布同样有限。然后,提出一些测试,在不满足要求的假设时,测试过于宽松或过于保守,这证明这些假设在实际数据分析中并非始终适用。为克服这一困难,本文件提出并研究了正常参考测试。据证明,在某些常规条件和无效假设下,拟议测试统计数据和基方类型混合物的分布同样有限。然后,提出使用基方类型混合物的混合物,将拟议测试统计数据的无效分布相近,比较合理。在规模控制方面,拟议基方类型混合物的分布非常接近于现有竞争者的近似性参数。还确立了当地替代方法下拟议测试的无药力。模拟研究和一个真实数据实例表明,在规模控制方面,拟议测试大大超越了现有竞争者。