Bootstrapping is a computer-intensive statistical method which treats the data set as a population and draws samples from it with replacement. This resampling method has wide application areas especially in mathematically intractable problems. In this study, it is used to obtain the empirical distributions of the parameters to determine whether they are statistically significant or not in a special case of nonparametric regression, conic multivariate adaptive regression splines (CMARS), a statistical machine learning algorithm. CMARS is the modified version of the well-known nonparametric regression model, multivariate adaptive regression splines (MARS), which uses conic quadratic optimization. CMARS is at least as complex as MARS even thou...
Kauermann G, Claeskens G, Opsomer JD. Bootstrapping for Penalized Spline Regression. JOURNAL OF COMP...
Various nonparametric kernel regression estimators are presented, based on which we consider two non...
grantor: University of TorontoThe bootstrap was introduced in 1979 as a computer-intensive...
Bootstrapping is a resampling technique which treats the original data set as a population and draws...
Conic Multivariate Adaptive Regression Splines (CMARS) which has been developed at the Institute of ...
Bootstrap methods can be used as an alternative for cross-validation in regression procedures such a...
In statistics, regression analysis is a technique, used to understand and model the relationship bet...
Multivariate Adaptive Regression Splines (MARS) is a very popular nonparametric regression method pa...
Recently, many authors have proposed new algorithms to improve the accuracy of certain classifiers b...
Multivariate adaptive regression splines (MARS) has become a popular data mining (DM) tool due to it...
We investigate bootstrap inference methods for nonlinear time series models obtained using Multivari...
We describe and contrast several different bootstrap procedures for penalized spline smoothers. The ...
The use of explanatory variables or covariates in a regression model is an important way to represen...
In the specialized literature, researchers can find a large number of proposals for solving regressi...
Learning to rank is a supervised learning problem that aims to construct a ranking model for the giv...
Kauermann G, Claeskens G, Opsomer JD. Bootstrapping for Penalized Spline Regression. JOURNAL OF COMP...
Various nonparametric kernel regression estimators are presented, based on which we consider two non...
grantor: University of TorontoThe bootstrap was introduced in 1979 as a computer-intensive...
Bootstrapping is a resampling technique which treats the original data set as a population and draws...
Conic Multivariate Adaptive Regression Splines (CMARS) which has been developed at the Institute of ...
Bootstrap methods can be used as an alternative for cross-validation in regression procedures such a...
In statistics, regression analysis is a technique, used to understand and model the relationship bet...
Multivariate Adaptive Regression Splines (MARS) is a very popular nonparametric regression method pa...
Recently, many authors have proposed new algorithms to improve the accuracy of certain classifiers b...
Multivariate adaptive regression splines (MARS) has become a popular data mining (DM) tool due to it...
We investigate bootstrap inference methods for nonlinear time series models obtained using Multivari...
We describe and contrast several different bootstrap procedures for penalized spline smoothers. The ...
The use of explanatory variables or covariates in a regression model is an important way to represen...
In the specialized literature, researchers can find a large number of proposals for solving regressi...
Learning to rank is a supervised learning problem that aims to construct a ranking model for the giv...
Kauermann G, Claeskens G, Opsomer JD. Bootstrapping for Penalized Spline Regression. JOURNAL OF COMP...
Various nonparametric kernel regression estimators are presented, based on which we consider two non...
grantor: University of TorontoThe bootstrap was introduced in 1979 as a computer-intensive...