Exceedance probability analysis: a practical and effective alternative to t-tests

Hening Huang
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Abstract

This paper presents a practical and effective alternative to the traditional t-tests for (1) comparing a sample or sample mean against a known mean (i.e. one-sample test) and (2) comparing two samples or two sample means (i.e. two-sample test).  The proposed method is referred to as exceedance probability (EP) analysis.  In a one-sample test, EP is defined as the probability that a sample or sample mean is greater than a known mean.   In a two-sample test, EP is defined as the probability that the difference between two samples or between two sample means is greater than a specified value (referred to as probabilistic effect size (PES)).  This paper also defines a new statistic called relative mean effect size (RMES).  RMES provides a true measure of the scientific significance (not the statistical significance) of the difference between two means.  A case study of preference between two manufacturers is presented to demonstrate the effectiveness of the proposed EP analysis, compared with four existing methods: t-tests, common language effect size (CL) analysis, signal content index (SCI) analysis, and Bayesian analysis.  Unlike these existing methods that require the assumption of normality, the proposed EP analysis can be performed with any type of distributions.  The case study example is examined with a normal distribution model and a raised cosine distribution model.  The former is solved with an analytical solution and the latter is solved with a numerical method known as probability domain simulation (PDS).
超越概率分析:一种替代t检验的实用而有效的方法
本文为(1)比较样本或样本均值与已知均值(即单样本检验)和(2)比较两个样本或两个样本均值(即双样本检验)提供了一个实用而有效的替代传统t检验的方法。所提出的方法被称为超越概率(EP)分析。在单样本检验中,EP被定义为样本或样本均值大于已知均值的概率。在双样本检验中,EP被定义为两个样本之间或两个样本均值之间的差异大于规定值的概率(称为概率效应大小(PES))。本文还定义了一个新的统计量,称为相对平均效应大小(RMES)。RMES提供了对两个平均值之间差异的科学显著性(而不是统计显著性)的真实度量。通过对两家制造商之间的偏好进行案例研究,并与现有的四种方法(t检验、共同语言效应大小(CL)分析、信号内容指数(SCI)分析和贝叶斯分析)进行比较,证明了所提出的EP分析的有效性。与这些现有的需要假设正态性的方法不同,所提出的EP分析可以用任何类型的分布进行。用正态分布模型和上升余弦分布模型对实例进行了检验。前者用解析解求解,后者用概率域模拟(PDS)的数值方法求解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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