Training structured predictors often requires a considerable time selecting features or tweaking the kernel. Multiple kernel learning (MKL) sidesteps this issue by embedding the kernel learning into the training procedure. Despite the recent progress towards efficiency of MKL algorithms, the structured output case remains an open research front. We propose a family of online algorithms able to tackle variants of MKL and group-LASSO, for which we show regret, convergence, and generalization bounds. Experiments on handwriting recognition and dependency parsing attest the success of the approach. </p
Many machine learning problems (e.g. training SVMs) have a mathematical programming (MP) formulation...
Many learning problems in computer vision can be posed as structured prediction problems, where the ...
Over the past few years, multiple kernel learning (MKL) has received significant attention among dat...
Structured prediction (SP) problems are characterized by strong interdependence among the output var...
Efficient learning from massive amounts of information is a hot topic in computer vision. Available ...
Kernel methods are popular and effective techniques for learning on structured data, such as trees a...
Regularization is a dominant theme in machine learning and statistics due to its prominent ability i...
The goal of Multiple Kernel Learning (MKL) is to combine kernels derived from multiple sources in a ...
We consider the problem of how to improve the efficiency of Multiple Kernel Learning (MKL). In liter...
This review examines kernel methods for online learning, in particular, multiclass classification. W...
Kernel-based methods for NLP tasks have been shown to enable robust and effective learning, although...
Kernel methods are a class of non-parametric learning techniques relying on kernels. A kernel genera...
In recent years there has been a lot of interest in designing principled classification algorithms o...
International audienceMultiple kernel learning aims at simultaneously learning a kernel and the asso...
© 2016 K. Nguyen, T. Le, V. Nguyen, T.D. Nguyen & D. Phung. The motivations of multiple ker...
Many machine learning problems (e.g. training SVMs) have a mathematical programming (MP) formulation...
Many learning problems in computer vision can be posed as structured prediction problems, where the ...
Over the past few years, multiple kernel learning (MKL) has received significant attention among dat...
Structured prediction (SP) problems are characterized by strong interdependence among the output var...
Efficient learning from massive amounts of information is a hot topic in computer vision. Available ...
Kernel methods are popular and effective techniques for learning on structured data, such as trees a...
Regularization is a dominant theme in machine learning and statistics due to its prominent ability i...
The goal of Multiple Kernel Learning (MKL) is to combine kernels derived from multiple sources in a ...
We consider the problem of how to improve the efficiency of Multiple Kernel Learning (MKL). In liter...
This review examines kernel methods for online learning, in particular, multiclass classification. W...
Kernel-based methods for NLP tasks have been shown to enable robust and effective learning, although...
Kernel methods are a class of non-parametric learning techniques relying on kernels. A kernel genera...
In recent years there has been a lot of interest in designing principled classification algorithms o...
International audienceMultiple kernel learning aims at simultaneously learning a kernel and the asso...
© 2016 K. Nguyen, T. Le, V. Nguyen, T.D. Nguyen & D. Phung. The motivations of multiple ker...
Many machine learning problems (e.g. training SVMs) have a mathematical programming (MP) formulation...
Many learning problems in computer vision can be posed as structured prediction problems, where the ...
Over the past few years, multiple kernel learning (MKL) has received significant attention among dat...