皮尔森卡方检定
数学
拟合优度
统计
卡方检验
范畴变量
检验统计量
统计的
皮尔逊积矩相关系数
均方误差
统计假设检验
作者
Shuhua Chang,Deli Li,Yongcheng Qi
标识
DOI:10.1080/02664763.2021.2017413
摘要
Pearson's chi-squared test is widely used to test the goodness of fit between categorical data and a given discrete distribution function. When the number of sets of the categorical data, say k, is a fixed integer, Pearson's chi-squared test statistic converges in distribution to a chi-squared distribution with k-1 degrees of freedom when the sample size n goes to infinity. In real applications, the number k often changes with n and may be even much larger than n. By using the martingale techniques, we prove that Pearson's chi-squared test statistic converges to the normal under quite general conditions. We also propose a new test statistic which is more powerful than chi-squared test statistic based on our simulation study. A real application to lottery data is provided to illustrate our methodology.
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