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Measurement Error

Measurement Error
Author: John P. Buonaccorsi
Publisher: CRC Press
Total Pages: 465
Release: 2010-03-02
Genre: Mathematics
ISBN: 1420066587

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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 illu


Strong Consistency of Estimation of Number of Regression Variables when the Errors are Independent and Their Expectations are Not Equal to Each Other

Strong Consistency of Estimation of Number of Regression Variables when the Errors are Independent and Their Expectations are Not Equal to Each Other
Author: Yuehua Wu
Publisher:
Total Pages: 27
Release: 1987
Genre:
ISBN:

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This document considers the linear regression model y sub i = x sub i B + e sub i, i = 1, 2 ..., where (x sub i) - is a sequence of known p-vectors, Beta = (Beta Sub 1 ..., Beta Sub p) is an unknown p-vector, known as regression coefficients, (e Sub i) is a sequence of random errors. It is of interest to test the hypothesis H Sub k: Beta Sub k+1 = ... = Beta Sub p = O, k = O, 1, ..., p. We do not assume that the random errors are identically distributed and have zero means, since it is sometimes realistic. As a compensation for this relaxation, we assume the errors have a common bounded support A Sub 1, a Sub 2 under certain conditions, we obtain the strongly consistent estimate of the number k for which Beta Sub k is not equal to O and Beta Sub k+1 = ... = Beta Sub p = O, by using the information theoretical criteria.


Uniformly Consistent Estimation of Linear Regression Models with Strictly Exogenous Instruments

Uniformly Consistent Estimation of Linear Regression Models with Strictly Exogenous Instruments
Author: Juan Carlos Escanciano
Publisher:
Total Pages: 28
Release: 2016
Genre:
ISBN:

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This paper investigates estimation of linear regression models with strictly exogenous instruments under minimal identifying assumptions. Commonly used Instrumental Variables (IV) estimators are not uniformly consistent in this setting (uniformity is in the underlying data generating process). This negative result is just one way to formalize the well-documented fact of high sensitivity of IV to the presence of weak instruments. This paper introduces a uniformly consistent estimator under nearly the minimal identifying assumption. The proposed estimator, called the Integrated Instrumental Variables (IIV) estimator, is a weighted least squares estimator with trivial implementation. Monte Carlo evidence supports the theoretical claims and suggests that the IIV estimator is a robust alternative to IV and optimal IV in finite samples under weak identification and strictly exogenous instruments. In an application with quarterly UK data IIV estimates a positive and significant elasticity of intertemporal substitution and an equally sensible estimate for its reciprocal, in contrast to IV methods that fail to identify these parameters.


Measurement Error in Nonlinear Models

Measurement Error in Nonlinear Models
Author: Raymond J. Carroll
Publisher: CRC Press
Total Pages: 334
Release: 1995-07-06
Genre: Mathematics
ISBN: 9780412047213

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This monograph provides an up-to-date discussion of analysis strategies for regression problems in which predictor variables are measured with errors. The analysis of nonlinear regression models includes generalized linear models, transform-both-sides models and quasilikelihood and variance function problems. The text concentrates on the general ideas and strategies of estimation and inference rather than being concerned with a specific problem. Measurement error occurs in many fields, such as biometry, epidemiology and economics. In particular, the book contains a large number of epidemiological examples. An outline of strategies for handling progressively more difficult problems is also provided.