Correlation matrices are an essential tool for investigating the dependency structures of random vectors or comparing them. We introduce an approach for testing a variety of null hypotheses that can be formulated based upon the correlation matrix. Examples cover MANOVA-type hypothesis of equal correlation matrices as well as testing for special correlation structures such as, e.g., sphericity. Apart from existing fourth moments, our approach requires no other assumptions, allowing applications in various settings. To improve the small sample performance, a bootstrap technique is proposed and theoretically justified. The performance of these test statistics is compared with existing procedures through extensive simulations.
翻译:关联矩阵是调查随机矢量依赖性结构或比较这些矢量的基本工具。我们采用了一种方法来测试根据相关矩阵可以拟订的各种无效假设,例如,涉及相同关联矩阵的MANOVA型假设,以及测试特殊关联结构,例如,球质等。除了现有的第四时刻外,我们的方法不需要其他假设,允许在不同环境中应用。为了改进小样本性能,我们提议了一种靴子捕捉技术,并在理论上是有道理的。通过广泛的模拟,将这些测试统计数据与现有程序进行比较。