Survey data are often subject to various types of errors such as misclassification. In this article, we consider a model where interest is simultaneously in two correlated response variables and one is potentially subject to misclassification. A motivating example of a recent study of the impact of a sexual education course for adolescents is considered. A simulation-based sample size determination scheme is applied to illustrate the impact of misclassification on power and bias for the parameters of interest
Most empirical work in the social sciences is based on observational data that are often both incomp...
Includes bibliographical references (p. 96-98).In a variety of regression applications, measurement ...
Abstract: Count data are subject to considerable sources of what is often referred to as non-samplin...
Summary: Poor measurement of explanatory variables occurs frequently in observational studies. Error...
This paper considers estimation of success probabilities of categorical binary data subject to miscl...
Ordinal categorical responses are frequently collected in survey studies, human medicine, and animal...
Includes bibliographical references (p. ).Mismeasurment, and specifically misclassification, are ine...
Misclassification in a binary exposure variable within an unmatched prospective study may lead to a ...
Covariate misclassification is well known to yield biased estimates in single level regression model...
Misclassification of epidemiological and observational data is a problem that commonly arises and ca...
Estimation of models for transitions between a set of states could be severely biased if units are i...
In this paper we consider the impact of both missing data and measurement errors on a longitudinal a...
Measurement error occurs frequently in observational studies investigating the relationship between...
Estimated associations between an outcome variable and misclassified covariates tend to be biased wh...
Errors in Variables (EIV) are a long-standing issue in many fields, including medical and epidemiol...
Most empirical work in the social sciences is based on observational data that are often both incomp...
Includes bibliographical references (p. 96-98).In a variety of regression applications, measurement ...
Abstract: Count data are subject to considerable sources of what is often referred to as non-samplin...
Summary: Poor measurement of explanatory variables occurs frequently in observational studies. Error...
This paper considers estimation of success probabilities of categorical binary data subject to miscl...
Ordinal categorical responses are frequently collected in survey studies, human medicine, and animal...
Includes bibliographical references (p. ).Mismeasurment, and specifically misclassification, are ine...
Misclassification in a binary exposure variable within an unmatched prospective study may lead to a ...
Covariate misclassification is well known to yield biased estimates in single level regression model...
Misclassification of epidemiological and observational data is a problem that commonly arises and ca...
Estimation of models for transitions between a set of states could be severely biased if units are i...
In this paper we consider the impact of both missing data and measurement errors on a longitudinal a...
Measurement error occurs frequently in observational studies investigating the relationship between...
Estimated associations between an outcome variable and misclassified covariates tend to be biased wh...
Errors in Variables (EIV) are a long-standing issue in many fields, including medical and epidemiol...
Most empirical work in the social sciences is based on observational data that are often both incomp...
Includes bibliographical references (p. 96-98).In a variety of regression applications, measurement ...
Abstract: Count data are subject to considerable sources of what is often referred to as non-samplin...