This paper examines improved regression methods for the linear multivariable measurement error model (MEM) when the data suffers from "collinearity." The difficulty collinearity presents for reliable estinlation is discussed and a systematic procedure, significance regression (SR-MEM), is developed to address collinearity. In addition to mitigating collinearity difficulties SR-MEM produces asymptotically unbiased estimates. The use of ordinary least squares (OLS) for the MEM is examined. For collinear data OLS can improve the mean squared error of estimation over the maximum likelihood (ML) unbiased estimator in a manner analogous to ridge regression (RR). The significance regression method developed for the classical model (SR-classical) c...
This paper presents a fully Bayesian approach to regression splines with automatic knot selection in...
This paper presents a fully Bayesian approach to regression splines with automatic knot selection in...
We are dealing with time series which are measured on an arbitrary scale, e.g. on a categorical or o...
This paper examines improved regression methods for the linear multivariable measurement error model...
This paper examines improved regression methods for the linear multivariable measurement error model...
We are dealing with regression models for point processes having a multiplicative intensity process ...
It is shown that Tyler's (1987) M-functional of scatter, whichis a robust surrogate for the covarian...
We construct pointwise confidence intervals for regression functions. The method uses nonparametric ...
We are dealing with regression models for point processes having a multiplicative intensity process ...
We are dealing with regression models for point processes having a multiplicative intensity process ...
This paper presents a fully Bayesian approach to regression splines with automatic knot selection in...
We are dealing with regression models for point processes having a multiplicative intensity process ...
We are dealing with regression models for point processes having a multiplicative intensity process ...
Necessary and sufficient conditions for metric regularity of (several joint) probabilistic constrain...
This paper presents a fully Bayesian approach to regression splines with automatic knot selection in...
This paper presents a fully Bayesian approach to regression splines with automatic knot selection in...
This paper presents a fully Bayesian approach to regression splines with automatic knot selection in...
We are dealing with time series which are measured on an arbitrary scale, e.g. on a categorical or o...
This paper examines improved regression methods for the linear multivariable measurement error model...
This paper examines improved regression methods for the linear multivariable measurement error model...
We are dealing with regression models for point processes having a multiplicative intensity process ...
It is shown that Tyler's (1987) M-functional of scatter, whichis a robust surrogate for the covarian...
We construct pointwise confidence intervals for regression functions. The method uses nonparametric ...
We are dealing with regression models for point processes having a multiplicative intensity process ...
We are dealing with regression models for point processes having a multiplicative intensity process ...
This paper presents a fully Bayesian approach to regression splines with automatic knot selection in...
We are dealing with regression models for point processes having a multiplicative intensity process ...
We are dealing with regression models for point processes having a multiplicative intensity process ...
Necessary and sufficient conditions for metric regularity of (several joint) probabilistic constrain...
This paper presents a fully Bayesian approach to regression splines with automatic knot selection in...
This paper presents a fully Bayesian approach to regression splines with automatic knot selection in...
This paper presents a fully Bayesian approach to regression splines with automatic knot selection in...
We are dealing with time series which are measured on an arbitrary scale, e.g. on a categorical or o...