A comprehensive guide to statistical hypothesis testing with examples in SAS and R When analyzing datasets the following questions often arise: Is there a short hand procedure for a statistical test available in SAS or R? If so, how do I use it? If not, how do I program the test myself? This book an
Statistical hypothesis testing with SAS and R
โ Scribed by Taeger, Dirk; Kuhnt, Sonja
- Publisher
- Wiley
- Year
- 2014
- Tongue
- English
- Leaves
- 308
- Category
- Library
No coin nor oath required. For personal study only.
โฆ Synopsis
"This book provides a reference guide to statistical tests and their application to data using SAS and R.A general summary of statistical test theory is presented, along with a general description for each test, together with necessary prerequisites, assumptions, and the formal test problem. The test statistic is stated together with annotations on its distribution, along with examples in both SAS and R. Each ย Read more...
Abstract:
โฆ Table of Contents
Content: 1. Statistical hypothesis testing --
2. Tests on the mean --
3. Tests on the variance --
4. Tests on proportions --
5. Poisson distribution --
6. Exponential distribution --
7. Tests on association --
8. Tests on location --
9. Tests on scale differences --
10. Other tests --
11. Tests on normality --
12. Tests on other distributions --
13. Tests on randomness --
14. Tests on contingency tables --
15. Tests on outliers --
16. Tests in regression analysis --
17. Tests in variance analysis.
โฆ Subjects
Statistical hypothesis testing.;SAS (Computer program language);R (Computer program language);MATHEMATICS -- Probability & Statistics -- General.
๐ SIMILAR VOLUMES
A comprehensive guide to statistical hypothesis testing with examples in SAS and R When analyzing datasets the following questions often arise: Is there a short hand procedure for a statistical test available in SAS or R? If so, how do I use it? If not, how do I program the test myself? T
Hoboken: Wiley, 2016. - 500p.<div class="bb-sep"></div>This book provides a first course on parameter estimation (point estimates and confidence interval estimates), hypothesis testing, ANOVA and simple linear regression. The authors approach combines mathematical depth with numerous examples and de
This book provides a comprehensive treatment of the logic behind hypothesis testing. Readers will learn to understand statistical hypothesis testing and how to interpret P-values under a variety of conditions including a single hypothesis test, a collection of hypothesis tests, and tests performed o
<span>This book is dedicated to the branch of statistical science which pertains to the theory of hypothesis testing. This involves deciding on the plausibility of two or more hypothetical models based on some data. This work will be both interesting and useful for professional and beginner research