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[下载]Ebook.Resampling - The New Statistics [推广有奖]

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hanszhu 发表于 2005-1-11 02:33:00 |AI写论文

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[此贴子已经被作者于2005-4-12 12:34:15编辑过]

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关键词:Resampling Statistics statistic Sampling Statist The NEW Statistics EBook Resampling

沙发
ready-(未真实交易用户) 发表于 2005-1-11 03:53:00
辛苦了,我为你喝彩

藤椅
Johnasen(未真实交易用户) 发表于 2005-1-11 18:17:00
Resampling 重复抽样??

板凳
sailjeff(未真实交易用户) 发表于 2005-1-11 19:52:00
thanks

报纸
cogitohk(未真实交易用户) 发表于 2005-1-16 15:23:00
Resample??? seems very interesting

地板
hanszhu(未真实交易用户) 发表于 2005-1-17 02:29:00

I am looking for the book<<Resampling Methods: A Practical Guide to Data Analysis>>by Phillip I. Good. Anybody has the info about the ebook, please let me know!

Book Info Provides a guide to data analysis using the bootstrap, cross-validation, and permutation test. Presents an essential resource for industrial statisticians, statistical consultants, and researcher professionals in science, engineering, and technology. DLC: Resampling (Statistics). Product Description: This new book is a practical guide to data analysis using the bootstrap, cross-validation, and permutation tests. It is an essential resource for industrial statisticians, statistical consultants, and researcher professionals in science, engineering, and technology.

Only requiring minimal mathematics beyond algebra, it provides a table-free introduction to data analysis utilizing numerous exercises, practical data sets, and freely available statistical shareware.

Topics and Features:

Uses resampling approach to introduction statistics A practical presentation that covers all three resampling methods - bootstrap, density-estimation, and permutations Includes systematic guide to help one select correct procedure for a particular application Detailed coverage of all three statistical methodologies - classification, estimation, and hypothesis testing Suitable for classroom use and individual, self-study purposes Numerous practical examples in most popular computer programs such as SASTM, StataTM, and StatXactTM Useful appendices with computer programs and code to develop own methods With its accessible style and intuitive topic development, the book is an excellent basic resource and guide to the power, simplicity, and versatility of bootstrap, cross-validation and permutation tests. Students, professionals and researchers will find it a particularly useful guide to modern resampling methods and their applications.

7
hanszhu(未真实交易用户) 发表于 2005-1-17 02:33:00

Please delete the post, Thanks!

[此贴子已经被作者于2005-1-17 2:45:28编辑过]

8
hanszhu(未真实交易用户) 发表于 2005-1-17 02:37:00
"Resampling: The New Statistics"

by Julian L. Simon Second Edition published October 1997

This text grew out of chapters in the 1969 edition of Basic Research Methods in Social Science by the same author, and contains the first published example of what was later called the bootstrap. Simon is best known for his research in demography, population and the economics of natural resources, and gained fame when the noted biologist Paul Ehrlich selected five commodities and bet Simon that scarcity would drive their prices up over the period of the bet (in fact, their prices all dropped). Resampling: The New Statistics contains a number of examples in Resampling Stats, a computer program originated by Simon, but can be read on its own without the program.

Table of Contents

Preface-A Look Back and A Look Ahead Introduction-Uses Of Probability and Statistics Afternote 1 Afternote 2 Chap 1-The Resampling Method of Solving Problems Chap 2-Basic Concepts in Probability and Statistics Chap 3-Basic Concepts in Probability and Statistics Chap 4-Probability Theory Chap 5-Probability Theory continued Chap 6-Probability Theory Part 2, Compound Probability Chap 7-Probability Theory, Part 3 Chap 8-Probability Theory, Part 4, Estimating Probabilities from Finite Universes: Chap 9-On Variability in Sampling Chap 10-The Procedures of Monte Carlo Simulation (and Resampling) Chap 11-The Basic Ideas in Statistical Inference Chap 12-Introduction to Statistical Inference Chap 13-Point Estimation Chap 14-Framing Statistical Questions Chap 15-Hypothesis-Testing with Counted Data, Part 1 Chap 16-The Concept of Statistical Significance in Testing Hypotheses Chap 17-The Statistics of Hypothesis-Testing With Counted Data, Part 2 Chap 18-The Statistics of Hypothesis-Testing With Measured Data Chap 19-General Procedures for Testing Hypotheses Chap 20-Confidence Intervals, Part 1, Assessing the Accuracy of Samples Chap 21-Confidence Intervals, Part 2, The Two Approaches to Estimating Confidence Intervals Chap 22-And Some Last Words About the Reliability of Sample Averages Chap 23-Correlation and Causation Chap 24-How Big a Sample Chap 25-Bayesian Analysis by Simulation Exercise Solutions Acknowledgements References Tech Note

[此贴子已经被作者于2005-1-17 3:40:55编辑过]

9
hanszhu(未真实交易用户) 发表于 2005-1-17 02:54:00

Resampling Methods: A Practical Guide to Data Analysis, 2nd ed

Title:Resampling Methods: A Practical Guide to Data Analysis 2nd edition
Author:Phillip I. Good
Publisher:Birkhäuser
Copyright:2001
ISBN:0-8176-4243-9
Pages:238; hardcover
Table of contents

Preface

1 Descriptive Statistics

1.1 Statistics
1.2 Reporting Your Results
1.3 Picturing Data
1.3.1 Graphs
1.3.2 From Observations to Questions
1.3.3 Contingency Tables
1.3.4 Types of Data
1.4 Measures of Location
1.4.1 Arithmetic Mean
1.4.2 Geometric Mean
1.5 Measures of Dispersion
1.6 Sample Versus Population
1.6.1 Statistics and Parameters
1.6.2 Estimating Population Parameters
1.6.3 Precision of an Estimate
1.6.4 Caveats
1.7 Summary
1.8 To Learn More
1.9 Exercises

2 Testing a Hypothesis

2.1 A Laboratory Experiment
2.2 Analyzing the Experiment
2.3 Some Statistical Considerations
2.3.1 Framing the Hypothesis
2.3.2 Hypothesis Versus Alternative
2.3.3 Unpredictable Variation
2.4 Two Types of Populations
2.4.1 Predicting the Unpredictable
2.5 Binomial Outcomes
2.5.1 Permutations and Rearrangements
2.5.2 Back to the Binomial
2.5.3 Probability
2.6 Independence
2.7 Selecting the Sample
2.7.1 A Young Woman Tasting Herbal Tea
2.7.2 Random Sampling and Representative Samples
2.8 Summary
2.9 To Learn More
2.10 Exercises

3 Testing Hypotheses

3.1 Five Steps to a Permutation Test
3.1.1 Analyze the Problem
3.1.2 Choose a Test Statistic
3.1.3 Compute the Test Statistic
3.1.4 Rearrange the Observations
3.1.5 Draw a Conclusion
3.2 A Second Example
3.2.1 Missing Data
3.2.2 More General Hypotheses
3.2.3 Behrens–Fisher Problem
3.3 Comparing Variances
3.3.1 Unequal Sample Sizes
3.4 Pitman Correlation
3.4.1 Effect of Ties
3.5 Bivariate Dependence
3.6 One-Sample Tests
3.6.1 The Bootstrap
3.6.2 Permutation Test
3.7 Matched Pairs
3.7.1 An Example: Pre-Treatment and Post-Treatment Levels
3.8 Summary
3.9 To Learn More
3.10 Exercises

4 When the Distribution Is Known

4.1 Properties of Independent Observations
4.2 Binomial Distribution
4.2.1 Testing Hypotheses About a Binomial Distribution
4.3 Poisson: Events Rare in Time and Space
4.3.1 Applying the Poisson
4.3.2 Comparing Two Poissons
4.3.3 Exponential Distribution
4.4 Normal Distribution
4.4.1 Tests for Location
4.4.2 Tests for Scale
4.5 Distributions
4.6 Applying What You've Learned
4.7 Summary and Further Readings
4.8 Exercises

5 Estimation

5.1 Point Estimation
5.2 Interval Estimation
5.2.1 Detecting an Unfair Coin
5.2.2 Confidence Bounds for a Sample Median
5.2.3 Confidence Intervals and Rejection Regions
5.2.4 One-Sample Test for the Variance
5.2.5 Behrens–Fisher Problem
5.3 Bivariate Correlation
5.4 Improving the Bootstrap Estimates
5.4.1 Bias-Corrected Bootstrap
5.4.2 Smoothing the Bootstrap
5.4.3 Iterated Bootstrap
5.5 Summary
5.6 To Learn More
5.7 Exercises

6 Power of a Test

6.1 Fundamental Concepts
6.1.1 Two Types of Error
6.1.2 Losses
6.1.3 Significance Level and Power
6.1.4 Exact, Unbiased Tests
6.1.5 Dollars and Decisions
6.1.6 What Significance Level Should I Use?
6.2 Assumptions
6.2.1 Transformations
6.3 How Powerful Are Our Tests?
6.3.1 One-Sample
6.3.2 Matched Pairs
6.3.3 Two Samples
6.4 Which Test?
6.5 Summary
6.6 To Learn More
6.7 Exercises

7 Categorical Data

7.1 Fisher's Exact Test
7.1.1 One-Tailed and Two-Tailed Tests
7.1.2 The Two-Tailed Test
7.2 Odds Ratio
7.2.1 Stratified 2 x 2's
7.3 Exact Significance Levels
7.4 Unordered r x c Contingency Tables
7.4.1 Causation Versus Association
7.5 Ordered Statistical Tables
7.5.1 Ordered 2 x c Tables
7.5.2 More than Two Rows and Two Columns
7.6 Summary
7.7 To Learn More
7.8 Exercises

8 Experimental Design and Analysis

8.1 Noise in the Data
8.1.1 Blocking
8.1.2 Measuring Factors We Can't Control
8.1.3 Randomization
8.2 k-Sample Comparison
8.2.1 Analyzing a One-Way Table
8.3 Balanced Designs
8.3.1 Main Effects
8.3.2 Analyzing a Two-Way Table
8.3.3 Testing for Interactions
8.3.4 A Worked-Through Example
8.4 Designing an Experiment
8.4.1 Latin Square
8.5 Determining Sample Size
8.6 Unbalanced Designs
8.6.1 Multidimensional Contingency Tables
8.6.2 Missing Combinations
8.7. Summary
8.8. To Learn More
8.9. Exercises

9 Multiple Variables and Multiple Hypotheses

9.1 Single-Valued Test Statistics
9.1.1 Two-Sample Multivariate Comparison
9.1.2 Applications to Repeated Measures
9.2 Combining Univariate Tests
9.3 The Generalized Quadratic Form
9.3.1 Mantel's U
9.3.2 Example in Epidemiology
9.3.3 Further Generalization
9.3.4 The MRPP Statistic
9.4 Multiple Hypotheses
9.5 Summary
9.6 To Learn More
9.7 Exercises

10 Model Building

10.1 Picturing Relationships
10.2 Unpredictable Variation
10.2.1 Building a Model
10.2.2 Estimating the Parameters
10.2.3 Testing for Significance
10.2.4 Comparing Two Regression Lines
10.3 Limitations of Regression
10.3.1 Local Regression
10.4 Validation
10.4.1 Metrics
10.4.2 Cross-Validation
10.5 Prediction Error
10.5.1 Correcting for Bias
10.6 Multivariate Relationships
10.6.1 Limitations of Multiple Regression
10.6.2 Applied Marketing Research
10.6.3 Transformations
10.7 Data Mining
10.7.1 Classification
10.7.2 Combined Approach
10.8 Summary
10.9 To Learn More
10.10 Exercises

11 Which Statistics Should I Use?

11.1 Parametric Versus Nonparametric
11.2 But Is It a Normal Distribution?
11.3 Which Hypothesis?
11.4 A Guide to Selection
11.4.1 Data in Categories
11.4.2 Ordered Observations
11.4.3 Continuous Data

Appendix 1 Program Your Own Resampling Statistics

Appendix 2 C++, SC, and Stata Code for Permutation Tests

Appendix 3 Resampling Software

Bibliography

Index

10
wogleee(真实交易用户) 发表于 2007-1-24 12:57:00
Thanks a lot!

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