Exponentiated gradient algorithms for large-margin structured classification


Autoria(s): Bartlett, Peter L.; Collins, Michael J.; Taskar, Ben; McAllester, David A.
Contribuinte(s)

Saul , Lawrence K.

Weiss, Yair

Bottou, Léon

Data(s)

01/07/2005

Resumo

We consider the problem of structured classification, where the task is to predict a label y from an input x, and y has meaningful internal structure. Our framework includes supervised training of Markov random fields and weighted context-free grammars as special cases. We describe an algorithm that solves the large-margin optimization problem defined in [12], using an exponential-family (Gibbs distribution) representation of structured objects. The algorithm is efficient—even in cases where the number of labels y is exponential in size—provided that certain expectations under Gibbs distributions can be calculated efficiently. The method for structured labels relies on a more general result, specifically the application of exponentiated gradient updates [7, 8] to quadratic programs.

Identificador

http://eprints.qut.edu.au/44012/

Publicador

MIT Press

Relação

http://books.nips.cc/nips17.html

Bartlett, Peter L., Collins, Michael J., Taskar, Ben, & McAllester, David A. (2005) Exponentiated gradient algorithms for large-margin structured classification. In Saul , Lawrence K. , Weiss, Yair , & Bottou, Léon (Eds.) Advances in Neural Information Processing Systems 17 : Proceedings of the 2004 Conference, MIT Press, Hyatt Regency, Vancouver, pp. 113-120.

Direitos

Copyright 2005 MIT Press

Fonte

Faculty of Science and Technology; Mathematical Sciences

Palavras-Chave #080600 INFORMATION SYSTEMS #Neural Information Processing Systems #Markov random fields
Tipo

Conference Paper