楼主: 蓝色
9606 32

Willey ebook-Statistics and Data with R: An applied approach through examples [推广有奖]

贵宾

已卖:4066份资源

泰斗

34%

还不是VIP/贵宾

-

TA的文库  其他...

统计软件和图书资源

Stata FAQ and Econometrics

威望
13
论坛币
1100141 个
通用积分
78894.6818
学术水平
3454 点
热心指数
3913 点
信用等级
2749 点
经验
472847 点
帖子
11699
精华
5
在线时间
20305 小时
注册时间
2004-7-15
最后登录
2025-12-21

初级热心勋章 初级信用勋章 初级学术勋章 中级学术勋章 中级热心勋章 中级信用勋章 高级热心勋章 高级信用勋章

楼主
蓝色 发表于 2009-1-16 14:45:00 |AI写论文

+2 论坛币
k人 参与回答

经管之家送您一份

应届毕业生专属福利!

求职就业群
赵安豆老师微信:zhaoandou666

经管之家联合CDA

送您一个全额奖学金名额~ !

感谢您参与论坛问题回答

经管之家送您两个论坛币!

+2 论坛币

Statistics and Data with R: An applied approach through examples

Wiley ebook-Statistics_and_Data_with_R.pdf (12 MB)

Statistics and Data with R: An applied approach through examples

Statistics and Data with R: An Applied Approach Through Examples
ISBN: 978-0-470-75805-2
Hardcover
618 pages
December 2008
Wiley List Price: US $100.00
R, an Open Source software, has become the de facto statistical computing environment. It has an excellent collection of data manipulation and graphics capabilities. It is extensible and comes with a large number of packages that allow statistical analysis at all levels – from simple to advanced – and in numerous fields including Medicine, Genetics, Biology, Environmental Sciences, Geology, Social Sciences and much more. The software is maintained and developed by academicians and professionals and as such, is continuously evolving and up to date. Statistics and Data with R presents an accessible guide to data manipulations, statistical analysis and graphics using R.

Assuming no previous knowledge of statistics or R, the book includes:

  • A comprehensive introduction to the R language.
  • An integrated approach to importing and preparing data for analysis, exploring and analyzing the data, and presenting results.
  • Over 300 examples, including detailed explanations of the R scripts used throughout.
  • Over 100 moderately large data sets from disciplines ranging from Biology, Ecology and Environmental Science to Medicine, Law, Military and Social Sciences.
  • A parallel discussion of analyses with the normal density, proportions (binomial), counts (Poisson) and bootstrap methods.
  • Two extensive indexes that include references to every R function (and its arguments and packages used in the book) and to every introduced concept.

An accompanying Wiki website, http://turtle.gis.umn.edu includes all the scripts and data used in the book. The website also features a solutions manual, providing answers to all of the exercises presented in the book. Visitors are invited to download/upload data and scripts and share comments, suggestions and questions with other visitors. Students, researchers and practitioners will find this to be both a valuable learning resource in statistics and R and an excellent reference book.

Preface.

Part I: Data in statistics and R.

1. Basic R.

1.1 Preliminaries.

1.2 Modes.

1.3 Vectors.

1.4 Arithmetic operators and special values.

1.5 Objects.

1.6 Programming.

1.7 Packages.

1.8 Graphics.

1.9 Customizing the workspace.

1.10 Projects.

1.12 Assignments.

2. Data in statistics and in R.

2.1 Types of data.

2.2 Objects that hold data.

2.3 Data organization.

2.4 Data import, export and connections.

2.5 Data manipulation.

2.6 Manipulating strings.

2.7 Assignments.

3. Presenting data.

3.1 Tables and the flavors of apply ()

3.2 Bar plots.

3.3 Histograms.

3.4 Dot charts.

3.5 Scatter plots.

3.6 Lattice plots.

3.7 Three-dimensional plots and contours.

3.8 Assignments.

Part II: Probability, densities and distributions.

4. Probability and random variables.

4.1 Set theory.

4.2 Trials, events and experiments.

4.3 Definitions and properties of probability.

4.4 Conditional probability and independence.

4.5 Algebra with probabilities.

4.6 Random variables.

4.7 Assignments.

5. Discrete densities and distributions.

5.1 Densities.

5.2 Distribution.

5.3 Properties.

5.4 Expected values.

5.5 Variance and standard deviation.

5.6 The binomial.

5.7 The Poisson.

5.8 Estimating parameters.

5.9 Some useful discrete densities.

5.10 Assignments.

6. Continuous distributions and densities.

6.1 Distributions.

6.2 Densities.

6.3 Properties.

6.4 Expected values.

6.5 Variance and standard deviation.

6.6 Areas under density curves.

6.7 Inverse distributions and simulations.

6.8 Some useful continuous densities.

6.9 Assignments.

7. The normal and sampling densities.

7.1 The normal density.

7.2 Applications of the normal.

7.3 Data transformations.

7.4 Random samples and sampling densities.

7.5 A detour: using R efficiently.

7.6 The sampling density of the mean.

7.7 The sampling density of proportion.

7.8 The sampling density of intensity.

7.9 The sampling density of variance.

7.10 Bootstrap: arbitrary parameters of arbitrary densities.

7.11 Assignments.

Part III: Statistics.

8. Exploratory data analysis.

8.1 Graphical methods.

8.2 Numerical summaries.

8.3 Visual summaries.

8.4 Assignments.

9. Point and interval estimation.

9.1 Point estimation.

9.2 Interval estimation.

9.3 Point and interval estimation for arbitrary densities.

9.4 Assignments.

10. Single sample hypotheses testing.

10.1 Null and alternative hypotheses.

10.2 Large sample hypothesis testing.

10.3 Small sample hypotheses testing.

10.4 Arbitrary parameters of arbitrary densities.

10.5 p-values.

10.6 Assignments.

11. Power and sample size for single samples.

11.1 Large sample.

11.2 Small samples.

11.3 Power and sample size for arbitrary densities.

11.4 Assignments.

12. Two samples.

12.1 Large samples.

12.2 Small samples.

12.3 Unknown densities.

12.4 Assignments.

13. Power and sample size for two samples.

13.1 Two means from normal populations.

13.2 Two proportions.

13.3 Two rates.

13.4 Assignments.

14. Simple linear regression.

14.1 Simple linear models.

14.2 Estimating regression coefficients.

14.3 The model goodness of fit.

14.4 Hypothesis testing and confidence intervals.

14.5 Model assumptions.

14.6 Model diagnostics.

14.7 Power and sample size for the correlation coefficient.

14.8 Assignments.

15. Analysis of variance.

15.1 One-way, fixed-effects ANOVA.

15.2 Non-parametric one-way ANOVA.

15.3 One-way, random-effects ANOVA.

15.4 Two-way ANOVA.

15.5 Two-way linear mixed effects models.

15.6 Assignments.

16. Simple logistic regression.

16.1 Simple binomial logistic regression.

16.2 Fitting and selecting models.

16.3 Assessing goodness of fit.

16.4 Diagnostics.

16.5 Assignments.

17. Application: the shape of wars to come.

17.1 A statistical profile of the war in Iraq.

17.2 A statistical profile of the second Intifada.

References.

R Index.

General Index.


 


[此贴子已经被作者于2009-1-16 15:59:22编辑过]

二维码

扫码加我 拉你入群

请注明:姓名-公司-职位

以便审核进群资格,未注明则拒绝

关键词:Statistics statistic Examples Approach example Applied Data Approach Examples Willey

已有 1 人评分经验 论坛币 收起 理由
ltx5151 + 20 + 20 根据规定进行奖励

总评分: 经验 + 20  论坛币 + 20   查看全部评分

本帖被以下文库推荐

沙发
ruiqwy 发表于 2009-1-16 17:11:00
谢谢!!这本书比较适合统计学和R语言的入门教材!!!
R is the second language for me!Using R is standing on the shoulders of giants!   Let\'s use R together!

藤椅
vernor 发表于 2009-1-16 21:47:00
呵呵,下了,谢谢啊。。。。。

板凳
barryg 发表于 2009-1-25 16:17:00
留个印,明天来下载

报纸
yangby926 发表于 2009-1-26 06:21:00

谢谢楼主,新年快乐!

地板
tangzhu 发表于 2009-1-26 13:27:00
谢谢楼主,非常好的东西,再次感谢,楼主大好人!

7
michaeljija 发表于 2009-1-31 23:35:00

It's good for me. Thanks!

8
zdzxc 发表于 2009-2-1 14:42:00

如何得到“禅”?有个大师说,“去做”。如何得到“统计学说”?让我先“照葫芦画瓢”吧。谢谢指路人,谢谢。

9
cny0120 发表于 2009-3-19 16:17:00
谢谢分享!

10
程娟 发表于 2009-3-19 22:24:00

最近正在学R,相信这本书有用,先抱走了,好书多多益善,楼主若还有类似的书,希望与我们分享

您需要登录后才可以回帖 登录 | 我要注册

本版微信群
加好友,备注cda
拉您进交流群
GMT+8, 2025-12-26 05:23