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 Location:  Home » Books » Data Manipulation with R (Use R)January 8, 2009  
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Data Manipulation with R (Use R)
Data Manipulation with R (Use R)
Author: Phil Spector
Publisher: Springer
Category: Book

List Price: $54.95
Buy New: $44.56
You Save: $10.39 (19%)
Buy New/Used from $44.56

Avg. Customer Rating: 4.5 out of 5 stars(5 reviews)
Sales Rank: 32180

Media: Paperback
Edition: 1
Number Of Items: 1
Pages: 154
Shipping Weight (lbs): 0.4
Dimensions (in): 9.1 x 5.9 x 0.5

ISBN: 0387747303
Dewey Decimal Number: 519
EAN: 9780387747309
ASIN: 0387747303

Publication Date: March 19, 2008
Shipping: Eligible for Super Saver Shipping
Availability: Usually ships in 24 hours

Editorial Reviews:

Product 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.




Customer Reviews:

5 out of 5 stars Start here   December 20, 2008
All too often novices wanting to use R for an analysis never get to the analysis because they can't successfully import, clean-up and restructure their data for the analysis functions. This book prevents those problems by telling you the critical data and file manipulation materials that are usually briefly (and inadequately) covered in stat books. It is a short easy read that will give you the tools to get your data ready to go.

You can see the table of contents and read the other reviews but areas that really shine include: dealing with categorical (named or ordered) factor variables, recoding numeric data into categorical variables, and also making and working with summary tables.

When it comes to data manipulation and clean-up Spector has the best coverage of any book or web FAQ. This book is very expensive for its size but it is worth every cent.



5 out of 5 stars Important text   June 26, 2008
  3 out of 4 found this review helpful

Data manipulation can often take as long as or longer than the actual analysis. The ability to manipulate data is not emphasized enough. This book gives a great introduction to this skill set. It is clearly written and provides good examples.


3 out of 5 stars Not much book for the price   June 15, 2008
  6 out of 8 found this review helpful

The title of the book implied a lot and the book did not deliver. If the book had twice as many pages it would have come close to the title's promise because the author would have had enough space to cover the broad area of manipulation of data in R. I felt as if the author was forced to discuss a topic in as little space as possible. Some the discussions where cursory at best. There was just enough information to leave you wandering what could have been said to give the reader a more in depth understanding of the topic.

I think the author knows this material "like the back of his hand", but, he forgot that the readers do not.



5 out of 5 stars Great little book   June 13, 2008
  10 out of 10 found this review helpful

This concise 150 page book contains a wealth of information, writen clearly and with many well-chosen examples. I liked it a lot. It covers reading and writing data in/out of the R workspace, including access to databases. The names of other chapters suggest the topics covered: "Dates", "Factors", "Subscripting", "Character manipulation", "Data aggregation", "Reshaping data".

This book will be helpful to any but the most absolutely new to R, and even the seasoned user will find interesting hints and examples. I cannot recommend it enough.

One minor qualm I have is the absence of references. Some topics (for instance, regular expressions) are fairly complex, and well documented elsewhere: a pointer or two would be helpful. Same with, for instance, SQL, which is mentioned and demonstrated briefly.

Another not-so-minor qualm is price. A book of this size from, for instance, Dover classics collection, with similar paper quality and covers, is about a third or fourth of the price. Although this is a new book I find the $54.95 tag (Amazon discounted price is about $44.50) fairly high. But this has nothing to do with the quality of the book, rather it has to do with the Springer pricing policies.

All in all, if you don't mind the price, this is a good buy.



5 out of 5 stars a must for statisticians wanting to learn R   May 11, 2008
  60 out of 62 found this review helpful

This book along with Jim Albert's should be read by every statistician that does a lot of statistical computing. Both books help you learn R quickly and apply it to many important problems in research both applied and theoretical. Albert emphasizes applications in Bayesian statistics whereas Spector is teaching how to do data manipulation, things like merging and transposing data sets. These techniques can be easy to do in a language like SAS after a little training but in other programming languages it can be very difficult.

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