This paper establishes the asymptotic independence between the quadratic form and maximum of a sequence of independent random variables. Based on this theoretical result, we find the asymptotic joint distribution for the quadratic form and maximum, which can be applied into the high-dimensional testing problems. By combining the sum-type test and the max-type test, we propose the Fisher's combination tests for the one-sample mean test and two-sample mean test. Under this novel general framework, several strong assumptions in existing literature have been relaxed. Monte Carlo simulation has been done which shows that our proposed tests are strongly robust to both sparse and dense data.
翻译:本文确定了四边形和独立随机变量最大序列之间的无症状独立性。 基于这一理论结果, 我们发现四方形和最大量的无症状联合分布, 可以应用于高维测试问题。 通过将总类型测试和最大量测试结合起来, 我们建议对单类平均测试和双类中值测试进行Fisher的组合测试。 在这个新颖的总体框架内, 现有文献中的一些强有力的假设已经放松了。 Monte Carlo 模拟显示我们提议的测试对稀有和密度数据都非常可靠。