
Aspects of Statistical Inference
A. H. Welsh(Author)
Wiley (Publisher)
1st Edition
Published on 23. October 1996
Book
Hardback
480 pages
978-0-471-11591-5 (ISBN)
Description
Relevant, concrete, and thorough--the essential data-based text onstatistical inference
The ability to formulate abstract concepts and draw conclusionsfrom data is fundamental to mastering statistics. Aspects ofStatistical Inference equips advanced undergraduate and graduatestudents with a comprehensive grounding in statistical inference,including nonstandard topics such as robustness, randomization, andfinite population inference.
A. H. Welsh goes beyond the standard texts and expertly synthesizesbroad, critical theory with concrete data and relevant topics. Thetext follows a historical framework, uses real-data sets andstatistical graphics, and treats multiparameter problems, yet isultimately about the concepts themselves.
Written with clarity and depth, Aspects of Statistical Inference:
* Provides a theoretical and historical grounding in statisticalinference that considers Bayesian, fiducial, likelihood, andfrequentist approaches
* Illustrates methods with real-data sets on diabetic retinopathy,the pharmacological effects of caffeine, stellar velocity, andindustrial experiments
* Considers multiparameter problems
* Develops large sample approximations and shows how to use them
* Presents the philosophy and application of robustness theory
* Highlights the central role of randomization in statistics
* Uses simple proofs to illuminate foundational concepts
* Contains an appendix of useful facts concerning expansions,matrices, integrals, and distribution theory
Here is the ultimate data-based text for comparing and presentingthe latest approaches to statistical inference.
The ability to formulate abstract concepts and draw conclusionsfrom data is fundamental to mastering statistics. Aspects ofStatistical Inference equips advanced undergraduate and graduatestudents with a comprehensive grounding in statistical inference,including nonstandard topics such as robustness, randomization, andfinite population inference.
A. H. Welsh goes beyond the standard texts and expertly synthesizesbroad, critical theory with concrete data and relevant topics. Thetext follows a historical framework, uses real-data sets andstatistical graphics, and treats multiparameter problems, yet isultimately about the concepts themselves.
Written with clarity and depth, Aspects of Statistical Inference:
* Provides a theoretical and historical grounding in statisticalinference that considers Bayesian, fiducial, likelihood, andfrequentist approaches
* Illustrates methods with real-data sets on diabetic retinopathy,the pharmacological effects of caffeine, stellar velocity, andindustrial experiments
* Considers multiparameter problems
* Develops large sample approximations and shows how to use them
* Presents the philosophy and application of robustness theory
* Highlights the central role of randomization in statistics
* Uses simple proofs to illuminate foundational concepts
* Contains an appendix of useful facts concerning expansions,matrices, integrals, and distribution theory
Here is the ultimate data-based text for comparing and presentingthe latest approaches to statistical inference.
Reviews / Votes
"...provides an introduction to the central ideas and methods of statistical inference..." (Quarterly of Applied Mathematics, Vol. LIX, No. 2, June 2001)More details
Series
Language
English
Place of publication
United States
Publishing group
John Wiley & Sons Inc
Target group
Professional and scholarly
Product notice
sewn/stitched
Cloth over boards
Dimensions
Height: 240 mm
Width: 161 mm
Thickness: 30 mm
Weight
883 gr
ISBN-13
978-0-471-11591-5 (9780471115915)
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Schweitzer Classification
Other editions
Additional editions

Person
A. H. WELSH is a Reader of Statistics at the Australian National University in Canberra, Australia.
Content
Statistical Models.
Bayesian, Fiducial and Likelihood Inference.
Frequentist Inference.
Large Sample Theory.
Robust Inference.
Randomization and Resampling.
Principles of Inference.
Appendix.
References.
Indexes.
Bayesian, Fiducial and Likelihood Inference.
Frequentist Inference.
Large Sample Theory.
Robust Inference.
Randomization and Resampling.
Principles of Inference.
Appendix.
References.
Indexes.