The problem of using information available from one variable X to make inferenceabout another Y is classical in many physical and social sciences. In statistics this isoften done via regression analysis where mean response is used to model the data. Onestipulates the model Y = µ(X) +ɛ. Here µ(X) is the mean response at the predictor variable value X = x, and ɛ = Y - µ(X) is the error. In classical regression analysis, both (X; Y ) are observable and one then proceeds to make inference about the mean response function µ(X). In practice there are numerous examples where X is not available, but a variable Z is observed which provides an estimate of X. As an example, consider the herbicidestudy of Rudemo, et al. [3] in which a nominal measured...
A measurement error model is a regression model with (substan-tial) measurement errors in the variab...
In many fields of statistical application the fundamental task is to quantify the association betwee...
This monograph on measurement error and misclassification covers a broad range of problems and empha...
A measurement error model is a regression model with (substantial) measurement errors in the variabl...
When measurement error is present among the covariates of a regression model it can cause bias in th...
It is well known that measurement error in observable variables induces bias in estimates in standar...
We consider the implications of an alternative to the classical measurement-error model, in which th...
Measurement errors cause problems in causal inference. However, except for canonical cases, research...
A simple form of measurement error model for explanatory variables is studied incorporating classica...
Measurement error biases OLS results. When the measurement error variance in absolute or relative (r...
In much of applied statistics variables of interest are measured with error. In particular, regressi...
Measurement error affecting the independent variables in regression models is a common problem in ma...
A simple form of measurement error model for explanatory variables is studied incorporating classica...
We consider the estimation of the regression of an outcome Y on a covariate X , where X is unob...
Inferences in measurement error models can be sensitive to modeling assumptions. Specifically, if th...
A measurement error model is a regression model with (substan-tial) measurement errors in the variab...
In many fields of statistical application the fundamental task is to quantify the association betwee...
This monograph on measurement error and misclassification covers a broad range of problems and empha...
A measurement error model is a regression model with (substantial) measurement errors in the variabl...
When measurement error is present among the covariates of a regression model it can cause bias in th...
It is well known that measurement error in observable variables induces bias in estimates in standar...
We consider the implications of an alternative to the classical measurement-error model, in which th...
Measurement errors cause problems in causal inference. However, except for canonical cases, research...
A simple form of measurement error model for explanatory variables is studied incorporating classica...
Measurement error biases OLS results. When the measurement error variance in absolute or relative (r...
In much of applied statistics variables of interest are measured with error. In particular, regressi...
Measurement error affecting the independent variables in regression models is a common problem in ma...
A simple form of measurement error model for explanatory variables is studied incorporating classica...
We consider the estimation of the regression of an outcome Y on a covariate X , where X is unob...
Inferences in measurement error models can be sensitive to modeling assumptions. Specifically, if th...
A measurement error model is a regression model with (substan-tial) measurement errors in the variab...
In many fields of statistical application the fundamental task is to quantify the association betwee...
This monograph on measurement error and misclassification covers a broad range of problems and empha...