Analysis of Nonparametric and Parametric Criteria for Statistical Hypotheses Testing. Chapter II. Agreement Criteria of Romanovsky, Student and Fisher

F. Motsnyi
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引用次数: 1

Abstract

Any assumptions or waiting for that or another distribution of random values are statistical hypotheses. The objective knowledge about hypotheses can obtain always using the spatial statistical tests that are named agreement criteria. It’s known about 100 different agreement criteria. Nonparametric tests don’t include in calculations the parameters of the probability distribution and operates with frequency only. They don’t assume that the experimental data have a specific distribution. Nonparametric criteria are widely used in analysis of the empirical data, in the checking of the hope models, the simple and complex statistical hypotheses and take a prominent place in science and practice. Parametric tests contain the distribution parameters. They are used for the samples with the normal distribution. Parametric tests permit: 1) to check the statistical hypotheses about the normal distribution characteristics of the population obtained on the base of sample processing; 2) to except the gross errors; 3) to evaluate the difference of the mathematical average values ; 4) and to distinguish the dispersions. That is why these tests are very extensively used in mathematical statistics too. The paper continues ideas of the author’s works [1; 2] devoted to advanced based tools of the mathematical statistics. The aim of the work is to generalize the well known theoretical and experimental results about the statistical tests of the hypotheses testing. Parametric criteria (Romanovsky, Student, Fisher) are discussed carefully from the uniform point of view. The peculiarities of its using for statistical hypothesis testing are highlighted. The typical tasks are suggested and solved. All this takes an opportunity to cover the main point (essence) of the problem as a whole and evaluate its actuality directly.
统计假设检验的非参数和参数准则分析。第二章。Romanovsky, Student和Fisher的一致标准
任何假设或等待随机值的那个或另一个分布都是统计假设。关于假设的客观知识总是可以使用被称为一致性标准的空间统计检验来获得。已知大约有100种不同的协议标准。非参数测试在计算中不包括概率分布的参数,只对频率进行操作。他们并不认为实验数据具有特定的分布。非参数准则广泛应用于实证数据的分析、希望模型的检验、简单和复杂的统计假设,在科学和实践中占有重要地位。参数化测试包含分布参数。它们用于具有正态分布的样本。参数检验允许:1)检验在样本处理的基础上获得的关于种群正态分布特征的统计假设;2) 除严重错误外;3) 以评估所述数学平均值的差异;4) 并区分分散体。这就是为什么这些测试在数理统计中也被广泛使用的原因。本文延续了作者致力于先进的数理统计工具的著作[1;2]的思想。本工作的目的是推广关于假设检验的统计检验的众所周知的理论和实验结果。从统一的角度对参数准则(Romanovsky,Student,Fisher)进行了仔细的讨论。强调了其用于统计假设检验的特点。提出并解决了典型任务。所有这些都抓住了一个机会,从整体上涵盖了问题的要点(本质),并直接评估了其现实性。
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