统计假设检验的非参数和参数准则分析。第1章。Pearson和Kolmogorov的一致准则

F. Motsnyi
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引用次数: 0

摘要

在实验结果的统计分析中,了解一般人群的分布规律是极其重要的。‎因为所有关于分布规律的假设都是统计假设,所以应该对它们进行检验。‎测试假设是通过使用统计标准来进行的,该标准将大量样本分为两个子集:零和可选。这个‎空假设在空子集中被接受,在备选子集中被拒绝。了解分布规律是使用数值数学方法的先决条件。如果经验分布和理论分布之间的差异是随机的,则该假设被接受。如果经验分布和理论分布之间的差异是至关重要的,那么该假设将被拒绝。统计假设检验有许多不同的一致性标准。本文延续了作者的思想,致力于先进的数理统计工具。这部分研究的是非参数一致性准则。非参数测试不允许我们在计算中包括概率分布的参数,只使用频率进行操作,也不允许我们直接假设实验数据具有特定的分布。非参数准则广泛应用于经验数据的分析、简单和复杂统计假设的检验等。它们包括著名的K.Pearson、A.Kolmogorov、N.H.Kuiper、G.S.Watson、T.W.Anderson、D.A.Darling、J.Zhang、Mann-Whitney U-test、Wilcoxon符号秩检验等。Pearson和Kolmogorov准则是数理统计学中最常用的准则。皮尔逊准则(-准则)是一种具有-分布的通用统计非参数准则。它用于检验在大量样本(n>50)下,样本分布服从一般群体理论的零假设。皮尔逊准则与理论频率的计算有关。Kolmogorov准则用于比较经验分布和理论分布,并允许找到这些分布之间的差异最大且在统计上可靠的点。Kolmogorov准则也适用于大量样本。应该注意的是,使用Pearson准则获得的结果更精确,因为实际上使用了所有的实验数据。发现了Pearson准则和Kolmogorov准则的特殊性。文中给出了计算公式,并对典型任务进行了建议和求解。提出并解决了一些典型的问题,有助于我们更深入地理解皮尔逊和科尔莫戈罗夫标准的本质。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of Nonparametric and Parametric Criteria for Statistical Hypotheses Testing. Chapter 1. Agreement Criteria of Pearson and Kolmogorov
In the statistical analysis of experimental results it is extremely important to know the distribution laws of the general population. ‎Because of all assumptions about the distribution laws are statistical hypotheses, they should be tested. ‎Testing hypotheses are carried out by using the statistical criteria that divided the multitude in two subsets: null and alternative. The ‎null hypothesis is accepted in subset null and is rejected in alternative subset. Knowledge of the distribution law is a prerequisite for the use of numerical mathematical methods. The hypothesis is accepted if the divergence between empirical and theoretical distributions will be random. The hypothesis is rejected if the divergence between empirical and theoretical distributions will be essential. There is a number of different agreement criteria for the statistical hypotheses testing. The paper continues ideas of the author’s works, devoted to advanced based tools of the mathematical statistics. This part of the paper is devoted to nonparametric agreement criteria. Nonparametric tests don’t allow us to include in calculations the parameters of the probability distribution and to operate with frequency only, as well as to assume directly that the experimental data have a specific distribution. Nonparametric criteria are widely used in analysis of the empirical data, in the testing of the simple and complex statistical hypotheses etc. They include the well known criteria of K. Pearson, A. Kolmogorov, N. H. Kuiper, G. S. Watson, T. W. Anderson, D. A. Darling, J. Zhang, Mann – Whitney U-test, Wilcoxon signed-rank test and so on. Pearson and Kolmogorov criteria are most frequently used in mathematical statistics. Pearson criterion (-criterion) is the universal statistical nonparametric criterion which has -distribution. It is used for the testing of the null hypothesis about subordination of the distribution of sample empirical to theory of general population at large amounts of sample (n>50). Pearson criterion is connected with calculation of theoretical frequency. Kolmogorov criterion is used for comparing empirical and theoretical distributions and permits to find the point in which the difference between these distributions is maximum and statistically reliable. Kolmogorov criterion is used at large amounts of sample too. It should be noted, that the results obtained by using Pearson criterion are more precise because practically all experimental data are used. The peculiarities of Pearson and Kolmogorov criteria are found out. The formulas for calculations are given and the typical tasks are suggested and solved. The typical tasks are suggested and solved that help us to understand more deeply the essence of Pearson and Kolmogorov criteria.
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