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Using R for Introductory Statistics

โœ Scribed by John Verzani


Publisher
Chapman and Hall/CRC
Year
2004
Tongue
English
Leaves
413
Edition
1
Category
Library

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โœฆ Synopsis


The cost of statistical computing software has precluded many universities from installing these valuable computational and analytical tools. R, a powerful open-source software package, was created in response to this issue. It has enjoyed explosive growth since its introduction, owing to its coherence, flexibility, and free availability. While it is a valuable tool for students who are first learning statistics, proper introductory materials are needed for its adoption.

Using R for Introductory Statistics fills this gap in the literature, making the software accessible to the introductory student. The author presents a self-contained treatment of statistical topics and the intricacies of the R software. The pacing is such that students are able to master data manipulation and exploration before diving into more advanced statistical concepts. The book treats exploratory data analysis with more attention than is typical, includes a chapter on simulation, and provides a unified approach to linear models.

This text lays the foundation for further study and development in statistics using R. Appendices cover installation, graphical user interfaces, and teaching with R, as well as information on writing functions and producing graphics. This is an ideal text for integrating the study of statistics with a powerful computational tool.

โœฆ Table of Contents


Book Cover......Page 1
Half-Title......Page 2
Title......Page 4
Copyright......Page 5
Content......Page 6
Preface......Page 8
1. Data......Page 12
2. Univariate Data......Page 42
3. Bivariate data......Page 78
4. Multivariate Data......Page 113
5. Describing Populations......Page 149
6. Simulation......Page 172
7. Confidence Intervals......Page 189
8. Significance Tests......Page 218
9. Goodness of Fit......Page 250
10. Linear Regression......Page 275
11. Analysis of Variance......Page 309
12. Two Extensions of the Linear Model......Page 338
Appendix A Getting, Installing, and Running R......Page 354
Appendix B Graphical User Interfaces and R......Page 359
Appendix C Teaching with R......Page 365
Appendix D More on Graphics with R......Page 367
Appendix E Programming in R......Page 380
Index......Page 403


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