Meny

# Statistics Using R

## An Integrative Approach

Statistics Using R

Using numerous examples with real data, this textbook closely integrates the learning of statistics with the learning of R. It is suitable for introductory-level learners, allows for curriculum flexibility, and includes, as an online resource, R-code script files for all examples and figures included in each chapter, for students to learn from and adapt and use in their future data analytic work. Les mer
Paperback
Vår pris: 837,-

(Paperback) Fri frakt!
Leveringstid: Sendes innen 7 virkedager
På grunn av Brexit-tilpasninger og tiltak for å begrense covid-19 kan det dessverre oppstå forsinket levering

Statistics Using R

Using numerous examples with real data, this textbook closely integrates the learning of statistics with the learning of R. It is suitable for introductory-level learners, allows for curriculum flexibility, and includes, as an online resource, R-code script files for all examples and figures included in each chapter, for students to learn from and adapt and use in their future data analytic work. Other unique features created specifically for this textbook include an online R tutorial that introduces readers to data frames and other basic elements of the R architecture, and a CRAN library of datasets and functions that is used throughout the book. Essential topics often overlooked in other introductory texts, such as data management, are covered. The textbook includes online solutions to all end-of-chapter exercises and PowerPoint slides for all chapters as additional resources, and is suitable for those who do not have a strong background in mathematics.

Preface; Acknowledgments; 1. Introduction; 2. Examining Univariate Distributions; 3. Measures of Location, Spread, And Skewness; 4. Re-Expressing Variables; 5. Exploring Relationships Between Two Variables; 6. Simple Linear Regression;7. Probability Fundamentals; 8. Theoretical Probability Models; 9. The Role of Sampling in Inferential Statistics; 10. Inferences Involving the Mean of a Single Population When Is Known; 11. Inferences Involving the Mean When Is Not Known: One- And Two-Sample Designs; 12. Research Design: Introduction and Overview; 13. One-Way Analysis Of Variance; 14. Two-Way Analysis Of Variance; 15. Correlation And Simple Regression as Inferential Techniques; 16. An Introduction to Multiple Regression; 17. Two-Way Interactions in Multiple Regression; 18. Nonparametric Methods; Appendix A. Data Set Descriptions; Appendix B. .R Files and Datasets in R Format; Appendix C. Statistical Tables; Appendix D. References; Appendix E. Solutions to End of Chapter Exercises; Index.

Using numerous examples with real data, this textbook closely integrates the learning of statistics with the learning of R.