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Auteurs principaux: Dennis, Brian, Taper, Mark L, Ponciano, José M
Format: Preprint
Publié: 2024
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Accès en ligne:https://arxiv.org/abs/2408.11672
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author Dennis, Brian
Taper, Mark L
Ponciano, José M
author_facet Dennis, Brian
Taper, Mark L
Ponciano, José M
contents Statistical hypothesis testing, as formalized by 20th Century statisticians and taught in college statistics courses, has been a cornerstone of 100 years of scientific progress. Nevertheless, the methodology is increasingly questioned in many scientific disciplines. We demonstrate in this paper how many of the worrisome aspects of statistical hypothesis testing can be ameliorated with concepts and methods from evidential analysis. The model family we treat is the familiar normal linear model with fixed effects, embracing multiple regression and analysis of variance, a warhorse of everyday science in labs and field stations. Questions about study design, the applicability of the null hypothesis, the effect size, error probabilities, evidence strength, and model misspecification become more naturally housed in an evidential setting. We provide a completely worked example featuring a 2-way analysis of variance.
format Preprint
id arxiv_https___arxiv_org_abs_2408_11672
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Evidential Analysis: An Alternative to Hypothesis Testing in Normal Linear Models
Dennis, Brian
Taper, Mark L
Ponciano, José M
Methodology
62
Statistical hypothesis testing, as formalized by 20th Century statisticians and taught in college statistics courses, has been a cornerstone of 100 years of scientific progress. Nevertheless, the methodology is increasingly questioned in many scientific disciplines. We demonstrate in this paper how many of the worrisome aspects of statistical hypothesis testing can be ameliorated with concepts and methods from evidential analysis. The model family we treat is the familiar normal linear model with fixed effects, embracing multiple regression and analysis of variance, a warhorse of everyday science in labs and field stations. Questions about study design, the applicability of the null hypothesis, the effect size, error probabilities, evidence strength, and model misspecification become more naturally housed in an evidential setting. We provide a completely worked example featuring a 2-way analysis of variance.
title Evidential Analysis: An Alternative to Hypothesis Testing in Normal Linear Models
topic Methodology
62
url https://arxiv.org/abs/2408.11672