Recently, standard single-task kernel methods have been extended to the case of multi-task learning under the framework of regularization. Experimental results have shown that such an approach can perform much better than single-task techniques, especially when few examples per task are available. However, a possible drawback may be computational complexity. For instance, when using regularization networks, complexity scales as the cube of the overall number of data associated with all the tasks. In this paper, an efficient computational scheme is derived for a widely applied class of multi-task kernels. More precisely, a quadratic loss is assumed and the multi-task kernel is the sum of a common term and a task-specific one. The proposed al...
This letter proposes a general regularization framework for inference over multitask networks. The o...
Multi-task learning can extract the correlation of multiple related machine learning problems to imp...
Multi-task learning is a paradigm shown to improve the performance of related tasks through their jo...
Recently, standard single-task kernel methods have been extended to the case of multi-task learning ...
Standard single-task kernel methods have recently been extended to the case of multitask learning in...
Standard single-task kernel methods have recently been extended to the case of multitask learning in...
Standard single-task kernel methods have recently been extended to the case of multitask learning in...
Editor: John Shawe-Taylor We study the problem of learning many related tasks simultaneously using k...
We introduce new Perceptron-based algorithms for the online multitask binary classification problem....
*This article is free to read on the publisher's website*\ud \ud In this paper we examine the proble...
*This article is free to read on the publisher's website* In this paper we examine the problem of pr...
We design and analyze interacting online algorithms for multitask classification that perform better...
The study of multitask learning algorithms is one of very important issues. This paper proposes a le...
We investigate multi-task learning from an output space regularization perspective. Most multi-task ...
Regularization is a dominant theme in machine learning and statistics due to its prominent ability i...
This letter proposes a general regularization framework for inference over multitask networks. The o...
Multi-task learning can extract the correlation of multiple related machine learning problems to imp...
Multi-task learning is a paradigm shown to improve the performance of related tasks through their jo...
Recently, standard single-task kernel methods have been extended to the case of multi-task learning ...
Standard single-task kernel methods have recently been extended to the case of multitask learning in...
Standard single-task kernel methods have recently been extended to the case of multitask learning in...
Standard single-task kernel methods have recently been extended to the case of multitask learning in...
Editor: John Shawe-Taylor We study the problem of learning many related tasks simultaneously using k...
We introduce new Perceptron-based algorithms for the online multitask binary classification problem....
*This article is free to read on the publisher's website*\ud \ud In this paper we examine the proble...
*This article is free to read on the publisher's website* In this paper we examine the problem of pr...
We design and analyze interacting online algorithms for multitask classification that perform better...
The study of multitask learning algorithms is one of very important issues. This paper proposes a le...
We investigate multi-task learning from an output space regularization perspective. Most multi-task ...
Regularization is a dominant theme in machine learning and statistics due to its prominent ability i...
This letter proposes a general regularization framework for inference over multitask networks. The o...
Multi-task learning can extract the correlation of multiple related machine learning problems to imp...
Multi-task learning is a paradigm shown to improve the performance of related tasks through their jo...