Introduction to Statistics: The Nonparametric Way
The present text introduces the student to the basic ideas of estimation and hypothesis testing early in the course after a rather brief introduction to data organization and some simple ideas about probability. Estimation and hypothesis testing are discussed in terms of the two-sample problem. The book exploits nonparametric ideas that rely on nothing more complicated than sample differences Y-X, referred to as elementary estimates, to define the Wilcoxon-Mann-Whitney test statistics and the related point and interval estimates. The ideas behind elementary estimates are then applied to the one-sample problem and to linear regression and rank correlation. Discussion of the Kruskal-Wallis and Friedman procedures for the k-sample problem rounds out the nonparametric coverage. The concluding chapters provide a discussion of Chi-square tests for the analysis of categorical data and introduce the student to the analysis of binomial data including the computation of power and sample size. Most chapters in the book have an appendix discussing relevant Minitab commands.
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JSTOR: Introduction to Statistics: The Nonparametric Way
Introduction to Statistics: The Nonparametric Way, by Gottfried E. Noether, New York: Springer-Verlag, 1991, xii + 414 pp., $49.50. ...
TPH\stat 464 home page
Text (required): Introduction to Statistics: The Nonparametric Way by Noether. Text (recommended) Minitab Handbook 3rd ed. by Ryan and Joiner ...
www.stat.psu.edu/ ~tph/ stat464.htm
Gottfried E. Noether - Wikipedia, the free encyclopedia
Introduction to Statistics: The Nonparametric Way. Springer. ISBN 0387972846. Noether, Gottfried E. (September 1985). "Fritz Noether (1884–194?)". ...
en.wikipedia.org/ wiki/ Gottfried_E._Noether
EP1129216 Genset european software patent - Methods, software and ...
EP1129216 Genset sa (FR): Methods, software and apparati for identifying genomic regions harboring a gene associated with a detectable trait Methoden, ...
gauss.ffii.org/ PatentView/ EP1129216