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E-Book

Carroll / Ruppert / Stefanski Measurement Error in Nonlinear Models

A Modern Perspective, Second Edition
2. Auflage 2012
ISBN: 978-1-4200-1013-8
Verlag: Taylor & Francis
Format: PDF
Kopierschutz: Adobe DRM (»Systemvoraussetzungen)

A Modern Perspective, Second Edition

E-Book, Englisch, 488 Seiten

Reihe: Chapman & Hall/CRC Monographs on Statistics & Applied Probability

ISBN: 978-1-4200-1013-8
Verlag: Taylor & Francis
Format: PDF
Kopierschutz: Adobe DRM (»Systemvoraussetzungen)



It’s been over a decade since the first edition of Measurement Error in Nonlinear Models splashed onto the scene, and research in the field has certainly not cooled in the interim. In fact, quite the opposite has occurred. As a result, Measurement Error in Nonlinear Models: A Modern Perspective, Second Edition has been revamped and extensively updated to offer the most comprehensive and up-to-date survey of measurement error models currently available. What’s new in the Second Edition? · Greatly expanded discussion and applications of Bayesian computation via Markov Chain Monte Carlo techniques · A new chapter on longitudinal data and mixed models · A thoroughly revised chapter on nonparametric regression and density estimation · A totally new chapter on semiparametric regression · Survival analysis expanded into its own separate chapter · Completely rewritten chapter on score functions · Many more examples and illustrative graphs · Unique data sets compiled and made available online In addition, the authors expanded the background material in Appendix A and integrated the technical material from chapter appendices into a new Appendix B for convenient navigation. Regardless of your field, if you’re looking for the most extensive discussion and review of measurement error models, then Measurement Error in Nonlinear Models: A Modern Perspective, Second Edition is your ideal source.

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Zielgruppe


Students and researchers in statistics, biostatistics, epidemiology, econometrics, social sciences, biological sciences, psychology, public health, and educational research. Suitable for anyone who wants to know how to do statistical analysis when the predictors are subject to measurement error or uncertainty.

Weitere Infos & Material


Guide to Notation

Introduction

The Double/Triple-Whammy of Measurement Error

Classical Measurement Error A Nutrition Example

Measurement Error Examples

Radiation Epidemiology and Berkson Errors

Classical Measurement Error Model Extensions

Other Examples of Measurement Error Models

Checking The Classical Error Model

Loss of Power

A Brief Tour

Bibliographic Notes

Important Concepts

Functional and Structural Models

Models for Measurement Error

Sources of Data

Is There an “Exact" Predictor? What is Truth?

Differential and Nondifferential Error

Prediction

Bibliographic Notes

Linear Regression and Attenuation

Introduction

Bias Caused by Measurement Error

Multiple and Orthogonal Regression

Correcting for Bias

Bias Versus Variance

Attenuation in General Problems

Bibliographic Notes

Regression Calibration

Overview

The Regression Calibration Algorithm

NHANES Example

Estimating the Calibration Function Parameters

Multiplicative Measurement Error

Standard Errors

Expanded Regression Calibration Models

Examples of the Approximations

Theoretical Examples

Bibliographic Notes and Software

Simulation Extrapolation

Overview

Simulation Extrapolation Heuristics

The SIMEX Algorithm

Applications

SIMEX in Some Important Special Cases

Extensions and Related Methods

Bibliographic Notes

Instrumental Variables

Overview

Instrumental Variables in Linear Models

Approximate Instrumental Variable Estimation

Adjusted Score Method

Examples

Other Methodologies

Bibliographic Notes

Score Function Methods

Overview

Linear and Logistic Regression

Conditional Score Functions

Corrected Score Functions

Computation and Asymptotic Approximations

Comparison of Conditional and Corrected Scores

Bibliographic Notes

Likelihood and Quasilikelihood

Introduction

Steps 2 and 3: Constructing Likelihoods

Step 4: Numerical Computation of Likelihoods

Cervical Cancer and Herpes

Framingham Data

Nevada Test Site Reanalysis

Bronchitis Example

Quasilikelihood and Variance Function Models

Bibliographic Notes

Bayesian Methods

Overview

The Gibbs Sampler

Metropolis-Hastings Algorithm

Linear Regression

Nonlinear Models

Logistic Regression

Berkson Errors

Automatic implementation

Cervical Cancer and Herpes

Framingham Data

OPEN Data: A Variance Components Model

Bibliographic Notes

Hypothesis Testing

Overview

The Regression Calibration Approximation

Illustration: OPEN Data

Hypotheses about Sub-Vectors of ßx and ßz

Efficient Score Tests of H0: ßx = 0

Bibliographic Notes

Longitudinal Data and Mixed Models

Mixed Models for Longitudinal Data

Mixed Measurement Error Models

A Bias Corrected Estimator

SIMEX for GLMMEMs

Regression Calibration for GLMMs

Maximum Likelihood Estimation

Joint Modeling

Other Models and Applications

Example: The CHOICE Study

Bibliographic Notes

Nonparametric Estimation

Deconvolution

Nonparametric Regression

Baseline Change Example

Bibliographic Notes

Semiparametric Regression

Overview

Additive Models

MCMC for Additive Spline Models

Monte-Carlo EM-Algorithm

Simulation with Classical Errors

Simulation with Berkson Errors

Semiparametrics: X Modeled Parametrically

Parametric Models: No Assumptions on X

Bibliographic Notes

Survival Data

Notation and Assumptions

Induced Hazard Function

Regression Calibration for Survival Analysis

SIMEX for Survival Analysis

Chronic Kidney Disease Progression

Semi and Nonparametric Methods

Likelihood Inference for Frailty Models

Bibliographic Notes

Response Variable Error

Response Error and Linear Regression

Other Forms of Additive Response Error

Logistic Regression with Response Error

Likelihood Methods

Use of Complete Data Only

Semiparametric Methods for Validation Data

Bibliographic Notes

Appendix A: Background Material

Overview

Normal and Lognormal Distributions

Gamma and Inverse Gamma Distributions

Best and Best Linear Prediction and Regression

Likelihood Methods

Unbiased Estimating Equations

Quasilikelihood and Variance Function Models (QVF)

Generalized Linear Models

Bootstrap Methods

Appendix B: Technical Details

Appendix to Chapter 1: Power in Berkson and Classical Error Models

Appendix to Chapter 3: Linear Regression and Attenuation

Regression Calibration

SIMEX

Instrumental Variables

Score Function Methods

Likelihood and Quasilikelihood

Bayesian Methods

References

Applications and Examples Index

Index



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