Skip to main content

Faculty & Research

Close

Learning Multiple Tasks with Kernel Methods

Evgeniou T., Micchelli C. A., Pontil M. (2005). 
Learning Multiple Tasks with Kernel Methods.
 Journal of Machine Learning Research5(4), pp615-637.
Journal Article
The authors study the problem of learning many related tasks simultaneously using kernel methods and regularization. The standard single-task kernel methods, such as support vector machines and regularization networks, are extended to the case of multi-task learning. Their analysis shows that the problem of estimating many task functions with regularization can be cast as a single task learning problem if a family of multi-task kernel functions they define is used. These kernels model relations among the tasks and are derived from a novel form of regularizers. Specific kernels that can be used for multi-task learning are provided and experimentally tested on two real datasets. In agreement with past empirical work on multi-task learning, the experiments show that learning multiple related tasks simultaneously using the proposed approach can significantly outperform standard single-task learning particularly when there are many related tasks but few data per task.
Faculty

Professor of Decision Sciences and Technology Management