Reviews
Description
Using R for Statistics will get you the answers to most of the problems you are likely to encounter when using a variety of statistics. This book is a problem-solution primer for using R to set up your data, pose your problems and get answers using a wide array of statistical tests. The book walks you through R basics and how to use R to accomplish a wide variety statistical operations.
You'll be able to navigate the R system, enter and import data, manipulate datasets, calculate summary statistics, create statistical plots and customize their appearance, perform hypothesis tests such as the t-tests and analyses of variance, and build regression models. Examples are built around actual datasets to simulate real-world solutions, and programming basics are explained to assist those who do not have a development background.
After reading and using this guide, you'll be comfortable using and applying R to your specific statistical analyses or hypothesis tests. No prior knowledge of R or of programming is assumed, though you should have some experience with statistics.
What you'll learn How to apply statistical concepts using R and some R programmingHow to work with data files, prepare and manipulate data, and combine and restructure datasetsHow to summarize continuous and categorical variablesWhat is a probability distribution How to create and customize plotsHow to do hypothesis testingHow to build and use regression and linear models Who this book is for
No prior knowledge of R or of programming is assumed, making this book ideal if you are more accustomed to using point-and-click style statistical packages. You should have some prior experience with statistics, however. Table of Contents 1. R Fundamentals
2. Working with Data Files
3. Preparing and Manipulating Data
4. Combining and Restructuring Data Sets
5. Continuous Variables
6. Tabular Data
7. Probability Distribution
8. Creating Plots
9. Customizing Plots
10. Hypothesis Tests
11. Regression and Linear Models
12. Appendix A: Basic Programming with R
13. Appendix B: Add-on Packages
14: Appendix C: Data Sets
"
Using R for Statistics will get you the answers to most of the problems you are likely to encounter when using a variety of statistics. This book is a problem-solution primer for using R to set up your data, pose your problems and get answers using a wide array of statistical tests. The book walks you through R basics and how to use R to accomplish a wide variety statistical operations.
You'll be able to navigate the R system, enter and import data, manipulate datasets, calculate summary statistics, create statistical plots and customize their appearance, perform hypothesis tests such as the t-tests and analyses of variance, and build regression models. Examples are built around actual datasets to simulate real-world solutions, and programming basics are explained to assist those who do not have a development background.
After reading and using this guide, you'll be comfortable using and applying R to your specific statistical analyses or hypothesis tests. No prior knowledge of R or of programming is assumed, though you should have some experience with statistics.
What you'll learn How to apply statistical concepts using R and some R programmingHow to work with data files, prepare and manipulate data, and combine and restructure datasetsHow to summarize continuous and categorical variablesWhat is a probability distribution How to create and customize plotsHow to do hypothesis testingHow to build and use regression and linear models Who this book is for
No prior knowledge of R or of programming is assumed, making this book ideal if you are more accustomed to using point-and-click style statistical packages. You should have some prior experience with statistics, however. Table of Contents 1. R Fundamentals
2. Working with Data Files
3. Preparing and Manipulating Data
4. Combining and Restructuring Data Sets
5. Continuous Variables
6. Tabular Data
7. Probability Distribution
8. Creating Plots
9. Customizing Plots
10. Hypothesis Tests
11. Regression and Linear Models
12. Appendix A: Basic Programming with R
13. Appendix B: Add-on Packages
14: Appendix C: Data Sets
"
Reviews