We propose a highly efficient framework for kernel multi-class models with a large and structured set of classes. Kernel parameters are learned automatically by maximizing the cross-validation log likelihood, and predictive probabilities are estimated. We demonstrate our approach on large scale text classification tasks with hierarchical class structure, achieving state-of-the-art results in an order of magnitude less time than previous work
With an immense growth in data, there is a great need for training and testing machine learning mode...
We present an algorithmic framework for supervised classification learning where the set of labels i...
In this paper we propose a probabilistic classification algorithm that learns a set of kernel functi...
We propose a highly efficient framework for kernel multi-class models with a large and structured se...
We propose a highly efficient framework for kernel multi-class models with a large and structured se...
We propose a highly efficient framework for penalized likelihood kernel methods applied to multi-cla...
We propose a highly efficient framework for penalized likelihood kernel methods applied to multi-cla...
We propose a highly efficient framework for penalized likelihood kernel methods applied to multi-cla...
We address the problem of learning hyperparameters in kernel methods for which the Hessian of the ob...
We address the problem of learning hyperparameters in kernel methods for which the Hessian of the ob...
National audienceIn this paper we propose a probabilistic classification algorithm that learns a set...
We present a kernel-based algorithm for hierarchical text classification where the documents are all...
In this paper we propose a probabilistic classification algorithm that learns a set of kernel functi...
We present a kernel-based algorithm for hierarchical text classification where the documents are all...
With an immense growth in data, there is a great need for training and testing machine learning mode...
With an immense growth in data, there is a great need for training and testing machine learning mode...
We present an algorithmic framework for supervised classification learning where the set of labels i...
In this paper we propose a probabilistic classification algorithm that learns a set of kernel functi...
We propose a highly efficient framework for kernel multi-class models with a large and structured se...
We propose a highly efficient framework for kernel multi-class models with a large and structured se...
We propose a highly efficient framework for penalized likelihood kernel methods applied to multi-cla...
We propose a highly efficient framework for penalized likelihood kernel methods applied to multi-cla...
We propose a highly efficient framework for penalized likelihood kernel methods applied to multi-cla...
We address the problem of learning hyperparameters in kernel methods for which the Hessian of the ob...
We address the problem of learning hyperparameters in kernel methods for which the Hessian of the ob...
National audienceIn this paper we propose a probabilistic classification algorithm that learns a set...
We present a kernel-based algorithm for hierarchical text classification where the documents are all...
In this paper we propose a probabilistic classification algorithm that learns a set of kernel functi...
We present a kernel-based algorithm for hierarchical text classification where the documents are all...
With an immense growth in data, there is a great need for training and testing machine learning mode...
With an immense growth in data, there is a great need for training and testing machine learning mode...
We present an algorithmic framework for supervised classification learning where the set of labels i...
In this paper we propose a probabilistic classification algorithm that learns a set of kernel functi...