In this paper we study the relevance of multiple kernel learning (MKL) for the automatic selection of time series inputs. Recently, MKL has gained great attention in the machine learning community due to its flexibility in modelling complex patterns and performing feature selection. In general, MKL constructs the kernel as a weighted linear combination of basis kernels, exploiting different sources of information. An efficient algorithm wrapping a Support Vector Regression model for optimizing the MKL weights, named SimpleMKL, is used for the analysis. In this sense, MKL performs feature selection by discarding inputs/kernels with low or null weights. The approach proposed is tested with simulated linear and nonlinear time series (AutoRegre...
The use of kernels in machine learning methods allows the identification of an optimal hyperplane fo...
Abstract—We propose a novel multiple kernel learning (MKL) algorithm with a group lasso regularizer,...
In this work we studied several families of learning algorithms, including Support Vector Machines, ...
In this paper we study the relevance of multiple kernel learning (MKL) for the automatic selection o...
The goal of Multiple Kernel Learning (MKL) is to combine kernels derived from multiple sources in a ...
International audienceMultiple kernel learning aims at simultaneously learning a kernel and the asso...
Summarization: Multiple kernel learning (MKL) is a parametric kernel learning approach which allows ...
Existing multiple kernel learning (MKL) algorithms \textit{indiscriminately} apply a same set of ker...
En col·laboració amb la Universitat de Barcelona (UB) i la Universitat Rovira i Virgili (URV)This th...
In many applications it is desirable to learn from several kernels. "Multiple kernel learning" (MKL)...
The goal of Multiple Kernel Learning (MKL) is to combine kernels derived from multiple sources in a ...
Kernel methods for classification is a well-studied area in which data are implicitly mapped from a ...
Recent advances in Multiple Kernel Learn-ing (MKL) have positioned it as an attrac-tive tool for tac...
Kernel methods are widely used to address a variety of learning tasks including classification, regr...
Many machine learning problems (e.g. training SVMs) have a mathematical programming (MP) formulation...
The use of kernels in machine learning methods allows the identification of an optimal hyperplane fo...
Abstract—We propose a novel multiple kernel learning (MKL) algorithm with a group lasso regularizer,...
In this work we studied several families of learning algorithms, including Support Vector Machines, ...
In this paper we study the relevance of multiple kernel learning (MKL) for the automatic selection o...
The goal of Multiple Kernel Learning (MKL) is to combine kernels derived from multiple sources in a ...
International audienceMultiple kernel learning aims at simultaneously learning a kernel and the asso...
Summarization: Multiple kernel learning (MKL) is a parametric kernel learning approach which allows ...
Existing multiple kernel learning (MKL) algorithms \textit{indiscriminately} apply a same set of ker...
En col·laboració amb la Universitat de Barcelona (UB) i la Universitat Rovira i Virgili (URV)This th...
In many applications it is desirable to learn from several kernels. "Multiple kernel learning" (MKL)...
The goal of Multiple Kernel Learning (MKL) is to combine kernels derived from multiple sources in a ...
Kernel methods for classification is a well-studied area in which data are implicitly mapped from a ...
Recent advances in Multiple Kernel Learn-ing (MKL) have positioned it as an attrac-tive tool for tac...
Kernel methods are widely used to address a variety of learning tasks including classification, regr...
Many machine learning problems (e.g. training SVMs) have a mathematical programming (MP) formulation...
The use of kernels in machine learning methods allows the identification of an optimal hyperplane fo...
Abstract—We propose a novel multiple kernel learning (MKL) algorithm with a group lasso regularizer,...
In this work we studied several families of learning algorithms, including Support Vector Machines, ...