This paper is concerned with the construction and analysis of a universal estimator for the regression problem in supervised learning. Universal means that the estimator does not depend on any a priori assumptions about the regression function to be estimated. The universal estimator studied in this paper consists of a least-square fitting procedure using piecewise constant functions on a partition which depends adaptively on the data. The partition is generated by a splitting procedure which differs from those used in CART algorithms. It is proven that this estimator performs at the optimal convergence rate for a wide class of priors on the regression function. Namely, as will be made precise in the text, if the regression function is in a...
Abstract — We consider algorithms for prediction, com-pression and entropy estimation in a universal...
We prove rates of convergence in the statistical sense for kernel-based least squares regression usi...
We follow a learning theory viewpoint to study a family of learning schemes for regression related t...
This paper is concerned with estimating the regression function fρ in supervised learning by utilizi...
Abstract. A new connectionist model for the solution of piecewise linear regression problems is intr...
A new learning algorithm for solving piecewise linear regression problems is proposed. It is able to...
A new connectionist model for the solution of piecewise lin- ear regression problems is introduced; ...
This paper looks at the strong consistency of the ordinary least squares (OLS) estimator in linear r...
In this paper, we present a novel algorithm for piecewise linear regression which can learn continuo...
For many large undirected models that arise in real-world applications, exact maximumlikelihood trai...
Let (X; Y ) be a pair of random variables such that X ranges over [0; 1] and Y is real - valued and ...
Modern data science calls for statistical inference algorithms that are both data-efficient and comp...
The learning properties of a universal approximator, a normalized committee machine with adjustable ...
We study the asymptotics for jump-penalized least squares regression aiming at approximating a regre...
AbstractMoving least-square (MLS) is an approximation method for data interpolation, numerical analy...
Abstract — We consider algorithms for prediction, com-pression and entropy estimation in a universal...
We prove rates of convergence in the statistical sense for kernel-based least squares regression usi...
We follow a learning theory viewpoint to study a family of learning schemes for regression related t...
This paper is concerned with estimating the regression function fρ in supervised learning by utilizi...
Abstract. A new connectionist model for the solution of piecewise linear regression problems is intr...
A new learning algorithm for solving piecewise linear regression problems is proposed. It is able to...
A new connectionist model for the solution of piecewise lin- ear regression problems is introduced; ...
This paper looks at the strong consistency of the ordinary least squares (OLS) estimator in linear r...
In this paper, we present a novel algorithm for piecewise linear regression which can learn continuo...
For many large undirected models that arise in real-world applications, exact maximumlikelihood trai...
Let (X; Y ) be a pair of random variables such that X ranges over [0; 1] and Y is real - valued and ...
Modern data science calls for statistical inference algorithms that are both data-efficient and comp...
The learning properties of a universal approximator, a normalized committee machine with adjustable ...
We study the asymptotics for jump-penalized least squares regression aiming at approximating a regre...
AbstractMoving least-square (MLS) is an approximation method for data interpolation, numerical analy...
Abstract — We consider algorithms for prediction, com-pression and entropy estimation in a universal...
We prove rates of convergence in the statistical sense for kernel-based least squares regression usi...
We follow a learning theory viewpoint to study a family of learning schemes for regression related t...