Book contents
- Frontmatter
- Dedication
- Contents
- Preface
- Content-how the chapters fit together
- 1 A brief introduction to R
- 2 Styles of data analysis
- 3 Statistical models
- 4 A review of inference concepts
- 5 Regression with a single predictor
- 6 Multiple linear regression
- 7 Exploiting the linear model framework
- 8 Generalized linear models and survival analysis
- 9 Time series models
- 10 Multi-level models and repeated measures
- 11 Tree-based classification and regression
- 12 Multivariate data exploration and discrimination
- 13 Regression on principal component or discriminant scores
- 14 The R system – additional topics
- 15 Graphs in R
- Epilogue
- References
- Index of R symbols and functions
- Index of terms
- Index of authors
- Plate Section
Preface
Published online by Cambridge University Press: 05 October 2013
- Frontmatter
- Dedication
- Contents
- Preface
- Content-how the chapters fit together
- 1 A brief introduction to R
- 2 Styles of data analysis
- 3 Statistical models
- 4 A review of inference concepts
- 5 Regression with a single predictor
- 6 Multiple linear regression
- 7 Exploiting the linear model framework
- 8 Generalized linear models and survival analysis
- 9 Time series models
- 10 Multi-level models and repeated measures
- 11 Tree-based classification and regression
- 12 Multivariate data exploration and discrimination
- 13 Regression on principal component or discriminant scores
- 14 The R system – additional topics
- 15 Graphs in R
- Epilogue
- References
- Index of R symbols and functions
- Index of terms
- Index of authors
- Plate Section
Summary
This book is an exposition of statistical methodology that focuses on ideas and concepts, and makes extensive use of graphical presentation. It avoids, as much as possible, the use of mathematical symbolism. It is particularly aimed at scientists who wish to do statistical analyses on their own data, preferably with reference as necessary to professional statistical advice. It is intended to complement more mathematically oriented accounts of statistical methodology. It may be used to give students with a more specialist statistical interest exposure to practical data analysis.
While no prior knowledge of specific statistical methods or theory is assumed, there is a demand that readers bring with them, or quickly acquire, some modest level of statistical sophistication. Readers should have some prior exposure to statistical methodology, some prior experience of working with real data, and be comfortable with the typing of analysis commands into the computer console. Some prior familiarity with regression and with analysis of variance will be helpful.
We cover a range of topics that are important for many different areas of statistical application. As is inevitable in a book that has this broad focus, there will be investigators working in specific areas – perhaps epidemiology, or psychology, or sociology, or ecology – who will regret the omission of some methodologies that they find important.
We comment extensively on analysis results, noting inferences that seem well-founded, and noting limitations on inferences that can be drawn. We emphasize the use of graphs for gaining insight into data – in advance of any formal analysis, for understanding the analysis, and for presenting analysis results.
- Type
- Chapter
- Information
- Data Analysis and Graphics Using RAn Example-Based Approach, pp. xix - xxivPublisher: Cambridge University PressPrint publication year: 2010