Additive coefficient model (Xue and Yang, 2006a, 2006b) is a flexible regression and autoregression tool that circumvents the “curse of dimensionality.” We propose spline-backfitted kernel (SBK) and spline-backfitted local linear (SBLL) estimators for the component functions in the additive coefficient model that are both (i) computationally expedient so they are usable for analyzing high dimensional data, and (ii) theoretically reliable so inference can be made on the component functions with confidence. In addition, they are (iii) intuitively appealing and easy to use for practitioners. The SBLL procedure is applied to a varying coefficient extension of the Cobb-Douglas model for the U.S. GDP that allows nonneutral effects of the R&D on c...
In the low-dimensional case, the generalized additive coefficient model (GACM) proposed by Xue and Y...
Non-linear relationships are accommodated in a regression model using smoothing functions. Interact...
We describe additive regression spline models as tools for smooth interpolation of fields that depen...
Application of nonparametric and semiparametric regression techniques to high-dimensional time serie...
A great deal of effort has been devoted to the inference of additive model in the last decade. Among...
AbstractUnder weak conditions of smoothness and mixing, we propose spline-backfitted spline (SBS) es...
Under weak conditions of smoothness and mixing, we propose spline-backfitted spline (SBS) estimators...
Abstract: A flexible nonparametric regression model is considered in which the response de-pends lin...
The additive model is the generalized of multiple linear regression that expresses the mean of a rep...
How do we model data that is non-linear? In linear regression, we assume that the underlying relatio...
Additive models are popular in high dimensional regression problems owing to their flexibility in mo...
Additive models are popular in high dimensional regression problems owing to their flexibility in mo...
The decline in the unemployment rate is an indication of the success of economic development in a co...
http://demonstrations.wolfram.com/NonparametricAdditiveModelingBySmoothingSplinesRobustUnbiase/.Nonp...
Graduation date: 2016Monotone additive models are useful in estimating productivity curves or analyz...
In the low-dimensional case, the generalized additive coefficient model (GACM) proposed by Xue and Y...
Non-linear relationships are accommodated in a regression model using smoothing functions. Interact...
We describe additive regression spline models as tools for smooth interpolation of fields that depen...
Application of nonparametric and semiparametric regression techniques to high-dimensional time serie...
A great deal of effort has been devoted to the inference of additive model in the last decade. Among...
AbstractUnder weak conditions of smoothness and mixing, we propose spline-backfitted spline (SBS) es...
Under weak conditions of smoothness and mixing, we propose spline-backfitted spline (SBS) estimators...
Abstract: A flexible nonparametric regression model is considered in which the response de-pends lin...
The additive model is the generalized of multiple linear regression that expresses the mean of a rep...
How do we model data that is non-linear? In linear regression, we assume that the underlying relatio...
Additive models are popular in high dimensional regression problems owing to their flexibility in mo...
Additive models are popular in high dimensional regression problems owing to their flexibility in mo...
The decline in the unemployment rate is an indication of the success of economic development in a co...
http://demonstrations.wolfram.com/NonparametricAdditiveModelingBySmoothingSplinesRobustUnbiase/.Nonp...
Graduation date: 2016Monotone additive models are useful in estimating productivity curves or analyz...
In the low-dimensional case, the generalized additive coefficient model (GACM) proposed by Xue and Y...
Non-linear relationships are accommodated in a regression model using smoothing functions. Interact...
We describe additive regression spline models as tools for smooth interpolation of fields that depen...