TY - BOOK AU - Naghshpour,Shahdad TI - A primer on nonparametric analysis T2 - Economics collection, SN - 9781631574467 AV - QA278.8 PY - 2016///.] CY - New York, New York (222 East 46th Street, New York, NY 10017) PB - Business Expert Press KW - Nonparametric statistics KW - median KW - order statistics KW - rank KW - one sample KW - two samples KW - several samples KW - multiple comparison KW - normality KW - skewness KW - [genre] N1 - Includes index; Section I. One-sample tests --; 1. Goodness of fit tests --; 2. Randomness tests --; 3. One-sample location inference --; Section II. One-sample tests --; 4. Comparing two unrelated samples: the Mann-Whitney U test --; 5. Goodness of fit for two samples --; Index; Access restricted to authorized users and institutions; 2; b; Also available in printing N2 - Nonparametric statistics provide a scientific methodology for cases where customary statistics are not applicable. Nonparametric statistics are used when the requirements for parametric analysis fail, such as when data are not normally distributed or the sample size is too small. The method provides an alternative for such cases and is often nearly as powerful as parametric statistics. Another advantage of nonparametric statistics is that it offers analytical methods that are not available otherwise. In social sciences, often, it is not possible to obtain measurements, which renders customary analysis impossible. For example, it is not possible to measure utility but is possible to rank preference, which is based on the unmeasurable utility. Nonparametric methods provide theoretically valid options for analysis, making the use of unscientific methods unnecessary. Nonparametric methods are intuitive and simple to comprehend, which helps researchers in the social sciences understand the methods in spite of lacking mathematical rigor needed in analytical methods customarily used in science. The only prerequisite for this book is high school level elementary algebra. This book is a methodology book and bypasses theoretical proofs while providing comprehensive explanations of the logic behind the methods and ample examples, which are all solved using direct computations as well as by using Stata. The book is arranged into two integrated volumes. Although each volume, and for that matter each chapter, can be used separately, it is advisable to read as much of both volumes as possible; because familiarity with what is applicable for different problems will enhance capabilities. It is recommended that everyone read the Introduction and Chapter 1 because determining whether data are random or normally distributed is essential in the selection of parametric versus nonparametric methods UR - https://go.openathens.net/redirector/ciu.edu?url=https://portal.igpublish.com/iglibrary/search/BEPB0000511.html ER -