Practical Statistics for Educators
โ Scribed by Ruth Ravid
- Publisher
- Rowman & Littlefield Pub Inc
- Year
- 2019
- Tongue
- English
- Leaves
- 311
- Edition
- 6
- Category
- Library
No coin nor oath required. For personal study only.
โฆ Synopsis
The book introduces educational students and practitioners to the use of statistics in education.
โฆ Table of Contents
Contents
List of Statistical Symbols
Preface
Acknowledgments
I. INTRODUCTION
1. An Overview of Educational Research
2. Basic Concepts in Statistics
II. DESCRIBING DISTRIBUTIONS
3. Organizing and Graphing Data
4. Measures of Central Tendency
5. Measures of Variability
6. The Normal Curve and Standard Scores
III. MEASURING RELATIONSHIPS
7. Correlation
8. Prediction and Regression
IV. COMPARING GROUP MEANS
9. t Test
10. Analysis of Variance
V. CHI SQUARE TEST
11. Chi Square Test
VI. STANDARDIZED TEST SCORES, RELIABILITY, AND VALIDITY
12. Interpreting Standardized Test Scores
13. Reliability
14. Validity
VII. PUTTING IT ALL TOGETHER
15. Choosing the Right Statistical Test
16. Using Statistical Tests to Analyze Survey Data
Study Guide for Practical Statistics for Educators
Glossary
Index
About the Author
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