A kernel-based greedy algorithm is presented to realize efficient sparse learning with data-dependent basis functions. Upper bound of generalization error is obtained based on complexity measure of hypothesis space with covering numbers. A careful analysis shows the error has a satisfactory decay rate under mild conditions
Many state-of-the-art approaches for Multi Kernel Learning (MKL) struggle at finding a compromise be...
AbstractWe consider the regression problem by learning with a regularization scheme in a data depend...
In this paper we study a family of gradient descent algorithms to approximate the regression functio...
We present greedy learning algorithms for building sparse nonlinear regression and classification mo...
We present some greedy learning algorithms for building sparse nonlinear regression and classificati...
We investigate machine learning for the least square regression with data dependent hypothesis and c...
We present a novel algorithm for sparse online greedy kernelbased nonlinear regression. This algori...
In kernel based methods such as Regularization Networks large datasets pose signi- cant problems s...
In the practice of machine learning, one often encounters problems in which noisy data are abundant ...
Data-dependent greedy algorithms in kernel spaces are known to provide fast converging interpolants,...
Learning a computationally efficient kernel from data is an important machine learning problem. The ...
Baudat and Anouar [1] propose a simple greedy algorithm for estimation of an approximate basis of th...
Kernel based methods provide a way to reconstruct potentially high-dimensional functions from meshfr...
Kernel-based methods provide flexible and accurate algorithms for the reconstruction of functions fr...
Consider linear prediction models where the target function is a sparse linear com-bination of a set...
Many state-of-the-art approaches for Multi Kernel Learning (MKL) struggle at finding a compromise be...
AbstractWe consider the regression problem by learning with a regularization scheme in a data depend...
In this paper we study a family of gradient descent algorithms to approximate the regression functio...
We present greedy learning algorithms for building sparse nonlinear regression and classification mo...
We present some greedy learning algorithms for building sparse nonlinear regression and classificati...
We investigate machine learning for the least square regression with data dependent hypothesis and c...
We present a novel algorithm for sparse online greedy kernelbased nonlinear regression. This algori...
In kernel based methods such as Regularization Networks large datasets pose signi- cant problems s...
In the practice of machine learning, one often encounters problems in which noisy data are abundant ...
Data-dependent greedy algorithms in kernel spaces are known to provide fast converging interpolants,...
Learning a computationally efficient kernel from data is an important machine learning problem. The ...
Baudat and Anouar [1] propose a simple greedy algorithm for estimation of an approximate basis of th...
Kernel based methods provide a way to reconstruct potentially high-dimensional functions from meshfr...
Kernel-based methods provide flexible and accurate algorithms for the reconstruction of functions fr...
Consider linear prediction models where the target function is a sparse linear com-bination of a set...
Many state-of-the-art approaches for Multi Kernel Learning (MKL) struggle at finding a compromise be...
AbstractWe consider the regression problem by learning with a regularization scheme in a data depend...
In this paper we study a family of gradient descent algorithms to approximate the regression functio...