Matrix regularization techniques for online multitask learning


Autoria(s): Agarwal, Alekh; Rakhlin, Alexander; Bartlett, Peter
Data(s)

23/10/2008

Resumo

In this paper we examine the problem of prediction with expert advice in a setup where the learner is presented with a sequence of examples coming from different tasks. In order for the learner to be able to benefit from performing multiple tasks simultaneously, we make assumptions of task relatedness by constraining the comparator to use a lesser number of best experts than the number of tasks. We show how this corresponds naturally to learning under spectral or structural matrix constraints, and propose regularization techniques to enforce the constraints. The regularization techniques proposed here are interesting in their own right and multitask learning is just one application for the ideas. A theoretical analysis of one such regularizer is performed, and a regret bound that shows benefits of this setup is reported.

Identificador

http://eprints.qut.edu.au/44020/

Publicador

University of California

Relação

http://www.eecs.berkeley.edu/Pubs/TechRpts/2008/EECS-2008-138.pdf

Agarwal, Alekh, Rakhlin, Alexander, & Bartlett, Peter (2008) Matrix regularization techniques for online multitask learning. Technical Report, UCB/EECS-2008-138. University of California, Berkeley, Calif..

Direitos

Copyright 2008 please consult the authors

Fonte

Faculty of Science and Technology; Mathematical Sciences

Palavras-Chave #OAVJ
Tipo

Report