Measurement Error

Regular price €61.50
Quantity:
In stock with our UK publisher. 14-28 days
Delivery/Collection within 10-20 working days
14 days return policy Shipping & Delivery
A01=John P. Buonaccorsi
Additive Measurement Error
Approximate Bias
Author_John P. Buonaccorsi
Berkson Error
Berkson Error Model
Berkson Model
binary regression
Bootstrap Percentile Interval
calibration
Category=GPS
Category=PBT
confidence
Constant Measurement Error Variances
correcting bias in statistical models
eq_isMigrated=1
eq_isMigrated=2
eq_nobargain
Error Prone Measure
estimated
Estimated Measurement Error Variances
Estimated Misclassification Rates
estimator
External Validation Data
Internal Validation Data
interval
likelihood techniques
Linear Measurement Error Model
linear mixed model
longitudinal data modeling
Measurement Error
Measurement Error Model
Measurement Error Parameters
Measurement Error Variance
misclassification analysis
Misclassification Rates
model
Multiple Linear Regression
naive
Naive Estimator
nonlinear regression
Normal Structural Model
quadratic regression
Reclassification Rates
regression
regression calibration
Reliability Ratio
simple linear regression
simulation extrapolation SIMEX
statistical error correction
time series model
validation study methods
variance
variances
Wald Interval

Product details

  • ISBN 9781032477688
  • Weight: 453g
  • Dimensions: 156 x 234mm
  • Publication Date: 21 Jan 2023
  • Publisher: Taylor & Francis Ltd
  • Publication City/Country: GB
  • Product Form: Paperback
Secure checkout Fast Shipping Easy returns

Over the last 20 years, comprehensive strategies for treating measurement error in complex models and accounting for the use of extra data to estimate measurement error parameters have emerged. Focusing on both established and novel approaches, Measurement Error: Models, Methods, and Applications provides an overview of the main techniques and illustrates their application in various models. It describes the impacts of measurement errors on naive analyses that ignore them and presents ways to correct for them across a variety of statistical models, from simple one-sample problems to regression models to more complex mixed and time series models.

The book covers correction methods based on known measurement error parameters, replication, internal or external validation data, and, for some models, instrumental variables. It emphasizes the use of several relatively simple methods, moment corrections, regression calibration, simulation extrapolation (SIMEX), modified estimating equation methods, and likelihood techniques. The author uses SAS-IML and Stata to implement many of the techniques in the examples.

Accessible to a broad audience, this book explains how to model measurement error, the effects of ignoring it, and how to correct for it. More applied than most books on measurement error, it describes basic models and methods, their uses in a range of application areas, and the associated terminology.

John P. Buonaccorsi is a professor in the Department of Mathematics and Statistics at the University of Massachusetts, Amherst.

More from this author