R in a Nutshell-A Desktop Quick ReferenceBy Joseph Adler Publisher: O'Reilly Media Released: December 2009 Pages: 640
- R Basics
- Getting and Installing Interactive R Binaries
- Other Ways to Run R
- Getting Help
- Exploring Package Repositories
- Custom Packages
- Seeing How R Works
- R Code Style Standards
- Attributes
- Exceptions
- Side Effects
- Old-School OOP in R: S3
- Parallel Computation with R
- High-Performance R Binaries
- Importing Data from Databases
- Sorting
- Customizing Charts
- Customizing Lattice Graphics
- Low-Level Functions
- Bootstrap Resampling
- Distribution Function Families
- Discrete Data
- ANOVA Test Design
- Machine Learning Algorithms for Regression
- Machine Learning Algorithms for Classification
- Clustering
- Time Series Models
- Key Bioconductor Packages
- Data Structures
- Where to Go Next
- Chapter 1 Getting and Installing R
- R Versions
- The R Graphical User Interface The R Console Batch Mode Using R Inside Microsoft Excel
- Basic Operations in R Functions Variables Introduction to Data Structures Objects and Classes Models and Formulas Charts and Graphics
- An Overview of Packages Listing Packages in Local Libraries Loading Packages
- Chapter 5 An Overview of the R Language
- Expressions Objects Symbols Functions Objects Are Copied in Assignment Statements Everything in R Is an Object Special Values Coercion The R Interpreter
- Constants Operators Expressions Control Structures Accessing Data Structures
- Primitive Object Types Vectors Lists Other Objects
- Symbols Working with Environments The Global Environment Environments and Functions
- The Function Keyword Arguments Return Values Functions As Arguments Argument Order and Named Arguments
- Overview of Object-Oriented Programming in R Object-Oriented Programming in R: S4 Classes
- Use Built-in Math Functions Use Environments for Lookup Tables Use a Database to Query Large Data Sets Preallocate Memory Monitor How Much Memory You Are Using Functions for Big Data Sets
- Chapter 12 Saving, Loading, and Editing Data
- Entering Data Within R Saving and Loading R Objects Importing Data from External Files Exporting Data
- Combining Data Sets Transformations Binning Data Subsets Summarizing Functions Data Cleaning Finding and Removing Duplicates
- An Overview of R Graphics Graphics Devices
- History An Overview of the Lattice Package High-Level Lattice Plotting Functions
- Chapter 16 Analyzing Data
- Summary Statistics Correlation and Covariance Principal Components Analysis Factor Analysis
- Normal Distribution Common Distribution-Type Arguments
- Continuous Data
- Experimental Design Example t-Test Design Proportion Test Design
- Example: A Simple Linear Model Details About the lm Function Subset Selection and Shrinkage Methods Nonlinear Models Survival Models Smoothing
- Linear Classification Models
- Market Basket Analysis
- Autocorrelation Functions
- An Example
- Appendix R Reference
- utils
- Colophon
- basebootclassclustercodetoolsforeigngrDevicesgraphicsgridKernSmoothlatticeMASSmethodsmgcvnlmennetrpartspatialsplinesstatsstats4survivaltcltktools


雷达卡




京公网安备 11010802022788号







