In various applications of regression analysis, in addition to errors in the dependent observations also errors in the predictor variables play a substantial role and need to be incorporated in the statistical modeling process. In this paper we consider a nonparametric measurement error model of Berkson type with fixed design regressors and centered random errors, which is in contrast to much existing work in which the predictors are taken as random observations with random noise. Based on an estimator that takes the error in the predictor into account and on a suitable Gaussian approximation, we derive %uniform confidence statements for the function of interest. In particular, we provide finite sample bounds on the coverage error of unifor...
While working on our guidance paper for biostatisticians, we came across some little-known facts rel...
The mean prediction error of a classification or regression procedure can be estimated using resampl...
Inferences in measurement error models can be sensitive to modeling assumptions. Specifically, if th...
AbstractRegression data often suffer from the so-called Berkson measurement error which contaminates...
It is common, in errors-in-variables problems in regression, to assume that the errors are incurred ...
Summary. Estimation of a regression function is a well-known problem in the context of errors in var...
The problem of using information available from one variable X to make inferenceabout another Y is c...
International audienceWe investigate the nonparametric estimation for regression in a fixed-design s...
A linear structural regression model is studied, where the covariate is observed with a mixture of t...
This paper considers the construction of optimal designs for nonlinear regres- sion models when the...
Abstract: This paper studies a minimum distance moment estimator for general nonlinear regression mo...
We study the effect of additive and multiplicative Berkson measurement error in Cox proportional haz...
Motivated by the problem of setting prediction intervals in time series analysis, this investigation...
Abstract This work gives a simultaneous analysis of both the ordinary least squares estimator and th...
International audienceThe problem of estimating the regression function in a fixed design models wit...
While working on our guidance paper for biostatisticians, we came across some little-known facts rel...
The mean prediction error of a classification or regression procedure can be estimated using resampl...
Inferences in measurement error models can be sensitive to modeling assumptions. Specifically, if th...
AbstractRegression data often suffer from the so-called Berkson measurement error which contaminates...
It is common, in errors-in-variables problems in regression, to assume that the errors are incurred ...
Summary. Estimation of a regression function is a well-known problem in the context of errors in var...
The problem of using information available from one variable X to make inferenceabout another Y is c...
International audienceWe investigate the nonparametric estimation for regression in a fixed-design s...
A linear structural regression model is studied, where the covariate is observed with a mixture of t...
This paper considers the construction of optimal designs for nonlinear regres- sion models when the...
Abstract: This paper studies a minimum distance moment estimator for general nonlinear regression mo...
We study the effect of additive and multiplicative Berkson measurement error in Cox proportional haz...
Motivated by the problem of setting prediction intervals in time series analysis, this investigation...
Abstract This work gives a simultaneous analysis of both the ordinary least squares estimator and th...
International audienceThe problem of estimating the regression function in a fixed design models wit...
While working on our guidance paper for biostatisticians, we came across some little-known facts rel...
The mean prediction error of a classification or regression procedure can be estimated using resampl...
Inferences in measurement error models can be sensitive to modeling assumptions. Specifically, if th...