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Transformation and Weighting in Regression Summary

Transformation and Weighting in Regression by Raymond J. Carroll (Texas A&M University, College Station, USA)

This monograph provides a careful review of the major statistical techniques used to analyze regression data with nonconstant variability and skewness. The authors have developed statistical techniques--such as formal fitting methods and less formal graphical techniques-- that can be applied to many problems across a range of disciplines, including pharmacokinetics, econometrics, biochemical assays, and fisheries research.

While the main focus of the book in on data transformation and weighting, it also draws upon ideas from diverse fields such as influence diagnostics, robustness, bootstrapping, nonparametric data smoothing, quasi-likelihood methods, errors-in-variables, and random coefficients. The authors discuss the computation of estimates and give numerous examples using real data. The book also includes an extensive treatment of estimating variance functions in regression.

About Raymond J. Carroll (Texas A&M University, College Station, USA)

Carroll, Raymond J.; Ruppert, David

Table of Contents

Introduction. Generalized Least Squares and the Analysis of Heteroscedasticity. Estimation and Inference for Variance Functions. The Transform-Both-Sides Methodology. Combining Transformations and Weighting. Influence and Robustness. Technical Complements. Some Open Problems. References. Index.

Additional information

NLS9780367403379
9780367403379
0367403374
Transformation and Weighting in Regression by Raymond J. Carroll (Texas A&M University, College Station, USA)
New
Paperback
Taylor & Francis Ltd
2019-09-27
264
N/A
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