Computational Statistics with R Computational Statistics with R

Computational Statistics with R

    • $279.99
    • $279.99

Publisher Description

R is open source statistical computing software. Since the R core group was formed in 1997, R has been extended by a very large number of packages with extensive documentation along with examples freely available on the internet. It offers a large number of statistical and numerical methods and graphical tools and visualization of extraordinarily high quality. R was recently ranked in 14th place by the Transparent Language Popularity Index and 6th as a scripting language, after PHP, Python, and Perl. The book is designed so that it can be used right away by novices while appealing to experienced users as well. Each article begins with a data example that can be downloaded directly from the R website. Data analysis questions are articulated following the presentation of the data. The necessary R commands are spelled out and executed and the output is presented and discussed. Other examples of data sets with a different flavor and different set of commands but following the theme of the article are presented as well. Each chapter predents a hands-on-experience. R has superb graphical outlays and the book brings out the essentials in this arena. The end user can benefit immensely by applying the graphics to enhance research findings. The core statistical methodologies such as regression, survival analysis, and discrete data are all covered. Addresses data examples that can be downloaded directly from the R website No other source is needed to gain practical experience Focus on the essentials in graphical outlays

GENRE
Science & Nature
RELEASED
2014
November 27
LANGUAGE
EN
English
LENGTH
412
Pages
PUBLISHER
Elsevier Science
SELLER
Elsevier Ltd.
SIZE
27.5
MB
Statistical Analysis and Data Display Statistical Analysis and Data Display
2015
COMPSTAT 2006 - Proceedings in Computational Statistics COMPSTAT 2006 - Proceedings in Computational Statistics
2007
Modern Statistical Methods for Spatial and Multivariate Data Modern Statistical Methods for Spatial and Multivariate Data
2019
Statistical Inference and Machine Learning for Big Data Statistical Inference and Machine Learning for Big Data
2022
Statistical Data Analytics Statistical Data Analytics
2015
The Multiple Facets of Partial Least Squares and Related Methods The Multiple Facets of Partial Least Squares and Related Methods
2016