The supremum of the standardized empirical process is a promising statistic for testing whether the distribution function $F$ of i.i.d. real random variables is either equal to a given distribution function $F_0$ (hypothesis) or $F \ge F_0$ (one-sided alternative). Since \cite{r5} it is well-known that an affine-linear transformation of the suprema converge in distribution to the Gumbel law as the sample size tends to infinity. This enables the construction of an asymptotic level-$\alpha$ test. However, the rate of convergence is extremely slow. As a consequence the probability of the type I error is much larger than $\alpha$ even for sample sizes beyond $10.000$. Now, the standardization consists of the weight-function $1/\sqrt{F_0(x)(1-F_0(x))}$. Substituting the weight-function by a suitable random constant leads to a new test-statistic, for which we can derive the exact distribution (and the limit distribution) under the hypothesis. A comparison via a Monte-Carlo simulation shows that the new test is uniformly better than the Smirnov-test and an appropriately modified test due to \cite{r20}. Our methodology also works for the two-sided alternative $F \neq F_0$.
翻译:标准化经验过程的上方值是一个很有希望的统计,用于测试分配函数 $F$ i.d. 真正的随机变量是否等于 $F_0美元(假冒) 或$F\ge F_0美元(单方替代方案)。自\ cite{r5} 以来,众所周知的是, suprema 的线性变换会随着样本大小的大小趋向于无限化而聚集到 Gumbel 法律的分布中。这样可以构建一个无症状水平-$\alpha$的测试。然而,趋同速度非常慢。由于I型错误的概率大大大于$\ galpha$,甚至超过$10000美元。现在,标准化由重量函数 $/sqrt{F_0 (x) (1-F_0.(x)) 折成线性变换成 。通过一个合适的随机恒定值来替代新的测试 - 20,我们可以据此得出精确的分布(并且通过两次的模拟测试方法显示一个更精确的模型) 。