This new edition follows the basic easy-to-digest pattern that was so well received by users of the earlier editions. The authors substantially update and expand Applied Nonparametric Statistical Methods to reflect changing attitudes towards applied statistics, new developments, and the impact of mo
Nonparametric Statistics for Applied Research
β Scribed by Jared A. Linebach, Brian P. Tesch, Lea M. Kovacsiss (auth.)
- Publisher
- Springer-Verlag New York
- Year
- 2014
- Tongue
- English
- Leaves
- 416
- Edition
- 1
- Category
- Library
No coin nor oath required. For personal study only.
β¦ Synopsis
ββNon-parametric methods are widely used for studying populations that take on a ranked order (such as movie reviews receiving one to four stars). The use of non-parametric methods may be necessary when data have a ranking but no clear numerical interpretation, such as when assessing preferences. In terms of levels of measurement, non-parametric methods result in "ordinal" data. As non-parametric methods make fewer assumptions, their applicability is much wider than the corresponding parametric methods. In particular, they may be applied in situations where less is known about the application in question. Also, due to the reliance on fewer assumptions, non-parametric methods are more robust. Non-parametric methods have many popular applications, and are widely used in research in the fields of the behavioral sciences and biomedicine.
This is a textbook on non-parametric statistics for applied research. The authors propose to use a realistic yet mostly fictional situation and series of dialogues to illustrate in detail the statistical processes required to complete data analysis. This book draws on a readers existing elementary knowledge of statistical analyses to broaden his/her research capabilities. The material within the book is covered in such a way that someone with a very limited knowledge of statistics would be able to read and understand the concepts detailed in the text.
The βreal worldβ scenario to be presented involves a multidisciplinary team of behavioral, medical, crime analysis, and policy analysis professionals work together to answer specific empirical questions regarding real-world applied problems. The reader is introduced to the team and the data set, and through the course of the text follows the team as they progress through the decision making process of narrowing the data and the research questions to answer the applied problem. In this way, abstract statistical concepts are translated into concrete and specific language.
This text uses one data set from which all examples are taken. This is radically different from other statistics books which provide a varied array of examples and data sets. Using only one data set facilitates reader-directed teaching and learning by providing multiple research questions which are integrated rather than using disparate examples and completely unrelated research questions and data.
β¦ Table of Contents
Front Matter....Pages i-xii
Introduction....Pages 1-9
Meeting the Team....Pages 11-28
Questions, Assumptions, and Decisions....Pages 29-66
Understanding Similarity (with a Little Help from Big Bird)....Pages 67-86
The Bourgeoisie, the Proletariat, and an Unwelcomed Press Conference....Pages 87-118
Agreeing to Disagree....Pages 119-154
Guesstimating the Fluffy-Maker....Pages 155-183
X Marks the Spot Revisited....Pages 185-202
Let My People Go!....Pages 203-225
Hereβs Your Sign and the Neighborhood Bowling League....Pages 227-262
Geometry on Steroids....Pages 263-277
Crunch Time....Pages 279-310
Presentation to the Governor....Pages 311-334
Back Matter....Pages 335-408
β¦ Subjects
Statistical Theory and Methods; Statistics for Social Science, Behavorial Science, Education, Public Policy, and Law; Statistics for Life Sciences, Medicine, Health Sciences
π SIMILAR VOLUMES
<p>This book is a practical introduction to statistical techniques called nonparaΒ metric methods. Using examples, we explain assumptions and demonstrate procedures; theory is kept to a minimum. We show how basic problems are tackled and try to clear up common misapprehensions so as to help both stu
Although it has been substantially updated and revised, this newedition follows the same easy-to-read pattern of the first edition. The introductory material on estimation and hypothesis testing has been rewritten to highlight modern approaches as well giving timely warning against potential misuse.
This new edition follows the basic easy-to-digest pattern that was so well received by users of the earlier editions. The authors substantially update and expand Applied Nonparametric Statistical Methods to reflect changing attitudes towards applied statistics, new developments, and the impact of mo
<p><p>Nonparametric statistics has probably become the leading methodology for researchers performing data analysis. It is nevertheless true that, whereas these methods have already proved highly effective in other applied areas of knowledge such as biostatistics or social sciences, nonparametric an
What do you do when you realize that the data set from the study that you have just completed violates the sample size or other requirements needed to apply parametric statistics? <strong>Nonparametric Statistics for Health Care Research</strong> by Marjorie A. Pett was developed for such scenariosβ