AbstractIn some applications, the mean or median response is linearly related to some variables but the relation to additional variables are not easily parameterized. Partly linear models arise naturally in such circumstances. Suppose that a random sample {(Ti, Xi, Yi),i=1, 2, …, n} is modeled byYi=XTiβ0+g0(Ti)+errori, whereYiis a real-valued response,Xi∈RpandTiranges over a unit square, andg0is an unknown function with a certain degree of smoothness. We make use of bivariate tensor-product B-splines as an approximation of the functiong0and consider M-type regression splines by minimization of ∑ni=1ρ(Yi−XTiβ−gn(Ti)) for some convex functionρ. Mean, median and quantile regressions are included in this class. We show under appropriate conditi...
Abstract: Nonparametric response transformations for regression models are of great interest and use...
This paper presents a fully Bayesian approach to regression splines with automatic knot selection in...
A new methodology for creating highly accurate, static nonlinear maps from scattered, multivariate d...
AbstractIn some applications, the mean or median response is linearly related to some variables but ...
We investigate posterior contraction rates for priors on multivariate functions that are constructed...
AbstractThe cyclic-shift tensor-factorization interpolation method recently described by de Boor can...
AbstractA construction of linear sufficient convexity conditions for polynomial tensor-product splin...
Extended linear models form a very general framework for sta-tistical modeling. Many practically imp...
Consider a strictly stationary time series Z (=) over cap{(X-i, Y-i): i=1,2,...) with X-i being R-d-...
We consider the functional linear regression model where the ex-planatory variable is a random surfa...
Abstract: A flexible nonparametric regression model is considered in which the response de-pends lin...
Penalized spline estimators have received considerable attention in recent years because of their go...
Splines constitute an interesting way to flexibly estimate a nonlinear relationship between several ...
Estimation of a conditional mean (linking a set of features to an outcome of interest) is a fundamen...
Multi-factor B-spline models formed from tensor products, and parsimonous sub-models of these produc...
Abstract: Nonparametric response transformations for regression models are of great interest and use...
This paper presents a fully Bayesian approach to regression splines with automatic knot selection in...
A new methodology for creating highly accurate, static nonlinear maps from scattered, multivariate d...
AbstractIn some applications, the mean or median response is linearly related to some variables but ...
We investigate posterior contraction rates for priors on multivariate functions that are constructed...
AbstractThe cyclic-shift tensor-factorization interpolation method recently described by de Boor can...
AbstractA construction of linear sufficient convexity conditions for polynomial tensor-product splin...
Extended linear models form a very general framework for sta-tistical modeling. Many practically imp...
Consider a strictly stationary time series Z (=) over cap{(X-i, Y-i): i=1,2,...) with X-i being R-d-...
We consider the functional linear regression model where the ex-planatory variable is a random surfa...
Abstract: A flexible nonparametric regression model is considered in which the response de-pends lin...
Penalized spline estimators have received considerable attention in recent years because of their go...
Splines constitute an interesting way to flexibly estimate a nonlinear relationship between several ...
Estimation of a conditional mean (linking a set of features to an outcome of interest) is a fundamen...
Multi-factor B-spline models formed from tensor products, and parsimonous sub-models of these produc...
Abstract: Nonparametric response transformations for regression models are of great interest and use...
This paper presents a fully Bayesian approach to regression splines with automatic knot selection in...
A new methodology for creating highly accurate, static nonlinear maps from scattered, multivariate d...