Data Manipulation with R Data Manipulation with R
Use R

Data Manipulation with R

    • $59.99
    • $59.99

Publisher Description

Since its inception, R has become one of the preeminent programs for statistical computing and data analysis. The ready availability of the program, along with a wide variety of packages and the supportive R community make R an excellent choice for almost any kind of computing task related to statistics. However, many users, especially those with experience in other languages, do not take advantage of the full power of R. Because of the nature of R, solutions that make sense in other languages may not be very efficient in R. This book presents a wide array of methods applicable for reading data into R, and efficiently manipulating that data.

In addition to the built-in functions, a number of readily available packages from CRAN (the Comprehensive R Archive Network) are also covered. All of the methods presented take advantage of the core features of R: vectorization, efficient use of subscripting, and the proper use of the varied functions in R that are provided for common data management tasks.

Most experienced R users discover that, especially when working with large data sets, it may be helpful to use other programs, notably databases, in conjunction with R. Accordingly, the use of databases in R is covered in detail, along with methods for extracting data from spreadsheets and datasets created by other programs. Character manipulation, while sometimes overlooked within R, is also covered in detail, allowing problems that are traditionally solved by scripting languages to be carried out entirely within R. For users with experience in other languages, guidelines for the effective use of programming constructs like loops are provided. Since many statistical modeling and graphics functions need their data presented in a data frame, techniques for converting the output of commonly used functions to data frames are provided throughout the book.

Using a variety of examples based on data sets included with R, along with easily simulated data sets, the book is recommended to anyone using R who wishes to advance from simple examples to practical real-life data manipulation solutions.

Phil Spector is Applications Manager of the Statistical Computing Facility and Adjunct Professor in the Department of Statistics at University of California, Berkeley.

GENRE
Science & Nature
RELEASED
2008
March 27
LANGUAGE
EN
English
LENGTH
164
Pages
PUBLISHER
Springer New York
SELLER
Springer Nature B.V.
SIZE
392.5
KB
Applied Population Genetics Applied Population Genetics
2016
Learning Scientific Programming with Python Learning Scientific Programming with Python
2016
Bioinformatics Programming Using Python Bioinformatics Programming Using Python
2009
An Introduction to Functional Programming Through Lambda Calculus An Introduction to Functional Programming Through Lambda Calculus
2013
Introductory Statistics with R Introductory Statistics with R
2008
Effective Computation in Physics Effective Computation in Physics
2015
ggplot2 ggplot2
2016
Data Mining with Rattle and R Data Mining with Rattle and R
2011
Introductory Time Series with R Introductory Time Series with R
2009
Business Analytics for Managers Business Analytics for Managers
2011
A Beginner's Guide to R A Beginner's Guide to R
2009
Applied Spatial Data Analysis with R Applied Spatial Data Analysis with R
2013