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Bootstrapping: A Nonparametric Approach to Statistical Inference

Authors:
Christopher Z. Mooney and Robert D. Duval
Publisher: Sage
Copyright: 1993
ISBN-13: 978-0-8039-5381-9
Pages: 72; paperback
Price: $17.75

Comment from the Stata technical group

Bootstrapping: A Nonparametric Approach to Statistical Inference, by C. Z. Mooney and R. D. Duval, provides one of the best introductions to the bootstrap you are likely to encounter. Although it was written for social science researchers, anyone familiar with classical statistical procedures will also find this text useful. Included are discussions of bias and variance estimates, confidence intervals, and statistical inference. The authors also discuss results from Monte Carlo simulations, empirically reassuring the reader that the bootstrap works as advertised.


Table of contents

Series Editor’s Introduction
Acknowledgments
1. Introduction
Traditional Parametric Statistical Inference
Bootstrap Statistical Inference
Bootstrapping a Regression Model
Theoretical Justification
The Jackknife
Monte Carlo Evaluation of the Bootstrap
2. Statistical Inference Using the Bootstrap
Bias Estimation
Bootstrap Confidence Intervals
3. Applications of Bootstrap Confidence Intervals
Confidence Intervals for Statistics With Unknown Sampling Distributions
The Sample Mean From a Small Sample
The Difference Between Two Sample Medians
Inference When Traditional Distributional Assumptions Are Violated
OLS Regression With a Nonnormal Error Structure
4. Conclusion
Future Work
Limitations of the Bootstrap
Concluding Remarks
Appendix: Bootstrapping With Statistical Software Packages
Notes
References
About the Authors
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