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Robustness Theory and Application
About this book
A preeminent expert in the field explores new and exciting methodologies in the ever-growing field of robust statistics
Used to develop data analytical methods, which are resistant to outlying observations in the data, while capable of detecting outliers, robust statistics is extremely useful for solving an array of common problems, such as estimating location, scale, and regression parameters. Written by an internationally recognized expert in the field of robust statistics, this book addresses a range of well-established techniques while exploring, in depth, new and exciting methodologies. Local robustness and global robustness are discussed, and problems of non-identifiability and adaptive estimation are considered. Rather than attempt an exhaustive investigation of robustness, the author provides readers with a timely review of many of the most important problems in statistical inference involving robust estimation, along with a brief look at confidence intervals for location. Throughout, the author meticulously links research in maximum likelihood estimation with the more general M-estimation methodology. Specific applications and R and some MATLAB subroutines with accompanying data setsāavailable both in the text and onlineāare employed wherever appropriate.
Providing invaluable insights and guidance, Robustness Theory and Application:
- Offers a balanced presentation of theory and applications within each topic-specific discussion
- Features solved examples throughout which help clarify complex and/or difficult concepts
- Meticulously links research in maximum likelihood type estimation with the more general M-estimation methodology
- Delves into new methodologies which have been developed over the past decade without stinting on coverage of "tried-and-true" methodologies
- Includes R and some MATLAB subroutines with accompanying data sets, which help illustrate the power of the methods described
Robustness Theory and Application is an important resource for all statisticians interested in the topic of robust statistics. This book encompasses both past and present research, making it a valuable supplemental text for graduate-level courses in robustness.
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Information
Table of contents
- COVER
- TABLE OF CONTENTS
- FOREWORD
- PREFACE
- 1 INTRODUCTION TO ASYMPTOTIC CONVERGENCE
- 2 THE FUNCTIONAL APPROACH
- 3 MORE RESULTS ON DIFFERENTIABILITY
- 4 MULTIPLE ROOTS
- 5 DIFFERENTIABILITY AND BIAS REDUCTION
- 6 MINIMUM DISTANCE ESTIMATION AND MIXTURE ESTIMATION
- 7 LāESTIMATES AND TRIMMED LIKELIHOOD ESTIMATES
- 8 TRIMMED LIKELIHOOD FOR MULTIVARIATE DATA
- 9 FURTHER DIRECTIONS AND CONCLUSION
- APPENDIX A: SPECIFIC PROOF OF THEOREM 2.1
- APPENDIX B: SPECIFIC CALCULATIONS IN EXAMPLES 4.1 AND 4.2
- APPENDIX C: CALCULATION OF MOMENTS IN EXAMPLE 4.2
- BIBLIOGRAPHY
- INDEX
- END USER LICENSE AGREEMENT