Permutation statistical methods with R / Kenneth J. Berry, Kenneth L. Kvamme, Janis E. Johnston, Paul W. Mielke, Jr.
2021
QA276
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Details
Title
Permutation statistical methods with R / Kenneth J. Berry, Kenneth L. Kvamme, Janis E. Johnston, Paul W. Mielke, Jr.
ISBN
9783030743611 (electronic bk.)
3030743616 (electronic bk.)
3030743608
9783030743604
3030743616 (electronic bk.)
3030743608
9783030743604
Publication Details
Cham, Switzerland : Springer, 2021.
Language
English
Description
1 online resource
Item Number
10.1007/978-3-030-74361-1 doi
Call Number
QA276
Dewey Decimal Classification
519.5
Summary
This book takes a unique approach to explaining permutation statistics by integrating permutation statistical methods with a wide range of classical statistical methods and associated R programs. It opens by comparing and contrasting two models of statistical inference: the classical population model espoused by J. Neyman and E.S. Pearson and the permutation model first introduced by R.A. Fisher and E.J.G. Pitman. Numerous comparisons of permutation and classical statistical methods are presented, supplemented with a variety of R scripts for ease of computation. The text follows the general outline of an introductory textbook in statistics with chapters on central tendency and variability, one-sample tests, two-sample tests, matched-pairs tests, completely-randomized analysis of variance, randomized-blocks analysis of variance, simple linear regression and correlation, and the analysis of goodness of fit and contingency. Unlike classical statistical methods, permutation statistical methods do not rely on theoretical distributions, avoid the usual assumptions of normality and homogeneity, depend only on the observed data, and do not require random sampling. The methods are relatively new in that it took modern computing power to make them available to those working in mainstream research. Designed for an audience with a limited statistical background, the book can easily serve as a textbook for undergraduate or graduate courses in statistics, psychology, economics, political science or biology. No statistical training beyond a first course in statistics is required, but some knowledge of, or some interest in, the R programming language is assumed.
Bibliography, etc. Note
Includes bibliographical references and index.
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Access limited to authorized users.
Source of Description
Online resource; title from PDF title page (SpringerLink, viewed October 13, 2021).
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Table of Contents
Preface
1 Introduction
2 The R Programming Language
3 Permutation Statistical Methods
4 Central Tendency and Variability
5 One-sample Tests
6 Two-sample Tests
7 Matched-pairs Tests
8 Completely-randomized Designs
9 Randomized-blocks Designs
10 Correlation and Association
11 Chi-squared and Related Measures
References
Index.
1 Introduction
2 The R Programming Language
3 Permutation Statistical Methods
4 Central Tendency and Variability
5 One-sample Tests
6 Two-sample Tests
7 Matched-pairs Tests
8 Completely-randomized Designs
9 Randomized-blocks Designs
10 Correlation and Association
11 Chi-squared and Related Measures
References
Index.