Implicit online learning


Autoria(s): Kulis, Brian; Bartlett, Peter L.
Data(s)

2010

Resumo

Online learning algorithms have recently risen to prominence due to their strong theoretical guarantees and an increasing number of practical applications for large-scale data analysis problems. In this paper, we analyze a class of online learning algorithms based on fixed potentials and nonlinearized losses, which yields algorithms with implicit update rules. We show how to efficiently compute these updates, and we prove regret bounds for the algorithms. We apply our formulation to several special cases where our approach has benefits over existing online learning methods. In particular, we provide improved algorithms and bounds for the online metric learning problem, and show improved robustness for online linear prediction problems. Results over a variety of data sets demonstrate the advantages of our framework.

Identificador

http://eprints.qut.edu.au/44001/

Relação

http://www.icml2010.org/papers/429.pdf

Kulis, Brian & Bartlett, Peter L. (2010) Implicit online learning. In Proceedings of the 27 th International Conference on Machine Learning, Haifa, Israel.

Direitos

copyright 2010 please consult authors

Fonte

Faculty of Science and Technology; Mathematical Sciences

Palavras-Chave #080100 ARTIFICIAL INTELLIGENCE AND IMAGE PROCESSING
Tipo

Conference Paper