be sharing
yangyanghub

R in Action: Data Analysis and Graphics with R 原版+中文版+videio版本

1 Star2 Stars3 Stars4 Stars5 Stars (No Ratings Yet)
Loading...

English | 6 Jun. 2015 | ISBN: 1617291382 | 608 Pages | EPUB/MOBI/PDF (True) | 48.53 MB

R in Action, Second Edition presents both the R language and the examples that make it so useful for business developers. Focusing on practical solutions, the book offers a crash course in statistics and covers elegant methods for dealing with messy and incomplete data that are difficult to analyze using traditional methods. You’ll also master R’s extensive graphical capabilities for exploring and presenting data visually. And this expanded second edition includes new chapters on time series analysis, cluster analysis, and classification methodologies, including decision trees, random forests, and support vector machines.

 

About the Technology

Business pros and researchers thrive on data, and R speaks the language of data analysis. R is a powerful programming language for statistical computing. Unlike general-purpose tools, R provides thousands of modules for solving just about any data-crunching or presentation challenge you’re likely to face. R runs on all important platforms and is used by thousands of major corporations and institutions worldwide.

About the Book

R in Action, Second Edition teaches you how to use the R language by presenting examples relevant to scientific, technical, and business developers. Focusing on practical solutions, the book offers a crash course in statistics, including elegant methods for dealing with messy and incomplete data. You’ll also master R’s extensive graphical capabilities for exploring and presenting data visually. And this expanded second edition includes new chapters on forecasting, data mining, and dynamic report writing.

What’s Inside

Complete R language tutorial
Using R to manage, analyze, and visualize data
Techniques for debugging programs and creating packages
OOP in R
Over 160 graphs

About the Author

Dr. Rob Kabacoff is a seasoned researcher and teacher who specializes in data analysis. He also maintains the popular Quick-R website at statmethods.net.

Table of Contents

PART 1 GETTING STARTED

Introduction to R
Creating a dataset
Getting started with graphs
Basic data management
Advanced data management

PART 2 BASIC METHODS

Basic graphs
Basic statistics

PART 3 INTERMEDIATE METHODS

Regression
Analysis of variance
Power analysis
Intermediate graphs
Resampling statistics and bootstrapping

PART 4 ADVANCED METHODS

Generalized linear models
Principal components and factor analysis
Time series
Cluster analysis
Classification
Advanced methods for missing data

PART 5 EXPANDING YOUR SKILLS

Advanced graphics with ggplot2
Advanced programming
Creating a package
Creating dynamic reports
Advanced graphics with the lattice package available online only from manning.com/kabacoff2

在线:

中文版:

View Fullscreen

英文版:

 

View Fullscreen

 

Download

链接:https://pan.baidu.com/s/1gnKQxyNlSdBrLwYpTq0c6w
提取码:z2fp

 

video 版本:

    1. PART 1. Getting started
      • Chapter 1. Introduction to R 00:09:42
      • Chapter 1. Obtaining and installing R 00:06:42
      • Chapter 1. The workspace 00:06:24
      • Chapter 1. Packages 00:07:47
      • Chapter 1. Using output as input: reusing results 00:05:39
      • Chapter 2. Creating a dataset 00:04:59
      • Chapter 2. Data structures 00:07:14
      • Chapter 2. Data frames 00:06:02
      • Chapter 2. Factors 00:09:04
      • Chapter 2. Data input 00:08:05
      • Chapter 2. Importing data from Excel 00:08:35
      • Chapter 2. Importing data from Stata 00:07:21
      • Chapter 2. Annotating datasets 00:04:43
      • Chapter 3. Getting started with graphs 00:06:34
      • Chapter 3. A simple example 00:07:13
      • Chapter 3. Text characteristics 00:04:13
      • Chapter 3. Adding text, customized axes, and legends 00:09:02
      • Chapter 3. Combining graphs 00:06:22
      • Chapter 4. Basic data management 00:06:14
      • Chapter 4. Recoding variables 00:09:32
      • Chapter 4. Date values 00:08:31
      • Chapter 4. Subsetting datasets 00:09:14
      • Chapter 5. Advanced data management 00:06:56
      • Chapter 5. Probability functions 00:07:52
      • Chapter 5. A solution for the data-management challenge 00:07:03
      • Chapter 5. User-written functions 00:04:31
      • Chapter 5. Transpose 00:06:31
    2. PART 2. Basic methods
      • Chapter 6. Basic graphs 00:09:02
      • Chapter 6. Pie charts 00:09:55
      • Chapter 6. Box plots 00:10:22
      • Chapter 7. Basic statistics 00:08:20
      • Chapter 7. Descriptive statistics by group 00:04:17
      • Chapter 7. Frequency and contingency tables 00:07:33
      • Chapter 7. Tests of independence 00:04:41
      • Chapter 7. Correlations 00:08:51
      • Chapter 7. T-tests 00:05:10
      • Chapter 7. Nonparametric tests of group differences 00:08:24
    3. PART 3. Intermediate methods
      • Chapter 8. Regression 00:08:37
      • Chapter 8. OLS regression 00:06:17
      • Chapter 8. Polynomial regression 00:09:38
      • Chapter 8. Regression diagnostics 00:07:13
      • Chapter 8. An enhanced approach 00:10:56
      • Chapter 8. Unusual observations 00:06:46
      • Chapter 8. Corrective measures 00:07:18
      • Chapter 8. Selecting the “best” regression model 00:08:58
      • Chapter 8. Taking the analysis further 00:09:59
      • Chapter 9. Analysis of variance 00:06:57
      • Chapter 9. Fitting ANOVA models 00:04:46
      • Chapter 9. One-way ANOVA 00:05:58
      • Chapter 9. One-way ANCOVA 00:04:46
      • Chapter 9. Two-way factorial ANOVA 00:06:44
      • Chapter 9. Multivariate analysis of variance (MANOVA) 00:08:29
      • Chapter 10. Power analysis 00:08:36
      • Chapter 10. Implementing power analysis with the pwr package 00:07:21
      • Chapter 10. Linear models 00:08:37
      • Chapter 10. Creating power analysis plots 00:04:54
      • Chapter 11. Intermediate graphs 00:06:54
      • Chapter 11. Scatter-plot matrices 00:09:16
      • Chapter 11. Line charts 00:08:06
      • Chapter 11. Mosaic plots 00:04:38
      • Chapter 12. Resampling statistics and bootstrapping 00:07:18
      • Chapter 12. Permutation tests with the coin package 00:08:01
      • Chapter 12. Permutation tests with the lmPerm package 00:05:19
      • Chapter 12. Additional comments on permutation tests 00:04:25
      • Chapter 12. Bootstrapping with the boot package 00:08:29
    4. PART 4. Advanced methods
      • Chapter 13. Generalized linear models 00:09:32
      • Chapter 13. Logistic regression 00:09:45
      • Chapter 13. Poisson regression 00:07:04
      • Chapter 13. Extensions 00:04:54
      • Chapter 14. Principal components and factor analysis 00:06:48
      • Chapter 14. Principal components 00:09:14
      • Chapter 14. Rotating principal components 00:05:19
      • Chapter 14. Exploratory factor analysis 00:05:26
      • Chapter 14. Rotating factors 00:05:38
      • Chapter 14. Other latent variable models 00:04:10
      • Chapter 15. Time series 00:07:33
      • Chapter 15. Smoothing and seasonal decomposition 00:10:02
      • Chapter 15. Exponential forecasting models 00:06:13
      • Chapter 15. Holt and Holt-Winters exponential smoothing 00:05:06
      • Chapter 15. ARIMA forecasting models 00:05:54
      • Chapter 15. ARMA and ARIMA models 00:08:50
      • Chapter 16. Cluster analysis 00:10:10
      • Chapter 16. Calculating distances 00:09:15
      • Chapter 16. Partitioning cluster analysis 00:08:44
      • Chapter 16. Avoiding nonexistent clusters 00:03:30
      • Chapter 17. Classification 00:09:07
      • Chapter 17. Decision trees 00:08:32
      • Chapter 17. Random forests 00:04:28
      • Chapter 17. Support vector machines 00:07:26
      • Chapter 17. Choosing a best predictive solution 00:05:08
      • Chapter 17. Using the rattle package for data mining 00:08:29
      • Chapter 18. Advanced methods for missing data 00:10:22
      • Chapter 18. Exploring missing-values patterns 00:08:16
      • Chapter 18. Understanding the sources and impact of missing data 00:06:14
      • Chapter 18. Complete-case analysis (listwise deletion) 00:10:09
      • Chapter 18. Other approaches to missing data 00:04:42
    5. PART 5. Expanding your skills
      • Chapter 19. Advanced graphics with ggplot2 00:06:19
      • Chapter 19. An introduction to the ggplot2 package 00:08:20
      • Chapter 19. Grouping 00:09:08
      • Chapter 19. Modifying the appearance of ggplot2 graphs 00:08:45
      • Chapter 19. Saving graphs 00:02:28
      • Chapter 20. Advanced programming 00:11:26
      • Chapter 20. Control structures 00:06:46
      • Chapter 20. Working with environments 00:07:49
      • Chapter 20. Writing efficient code 00:07:45
      • Chapter 20. Debugging 00:10:18
      • Chapter 21. Creating a package 00:09:32
      • Chapter 21. Developing the package 00:05:19
      • Chapter 21. Printing the results 00:06:06
      • Chapter 21. Creating the package documentation 00:04:09
      • Chapter 21. Building the package 00:08:45
      • Chapter 22. Creating dynamic reports 00:07:00
      • Chapter 22. Creating dynamic reports with R and Markdown 00:07:09
      • Chapter 22. Creating dynamic reports with R and LaTeX 00:06:16
      • Chapter 22. Creating dynamic reports with R and Microsoft Word 00:07:35

 

 

此资源下载价格为58SP=sharing point,请先
Download 百度网盘:以下隐藏内容只提供VIP赞助会员 sorry! The following hidden content sponsorship VIP members only.
赞(0) 打赏
All rights reserved;Without permission;Press Banyangyanghub » R in Action: Data Analysis and Graphics with R 原版+中文版+videio版本

评论/Comment 抢沙发

评论前必须登录!

 

觉得文章有用就打赏一下文章作者

支付宝扫一扫打赏

微信扫一扫打赏