Multitask learning with expert advice


Autoria(s): Abernethy, Jacob; Bartlett, Peter L.; Rakhlin, Alexander
Contribuinte(s)

Bshouty, Nader H.

Gentile, Claudio

Data(s)

2007

Resumo

We consider the problem of prediction with expert advice in the setting where a forecaster is presented with several online prediction tasks. Instead of competing against the best expert separately on each task, we assume the tasks are related, and thus we expect that a few experts will perform well on the entire set of tasks. That is, our forecaster would like, on each task, to compete against the best expert chosen from a small set of experts. While we describe the “ideal” algorithm and its performance bound, we show that the computation required for this algorithm is as hard as computation of a matrix permanent. We present an efficient algorithm based on mixing priors, and prove a bound that is nearly as good for the sequential task presentation case. We also consider a harder case where the task may change arbitrarily from round to round, and we develop an efficient approximate randomized algorithm based on Markov chain Monte Carlo techniques.

Identificador

http://eprints.qut.edu.au/43970/

Publicador

Springer

Relação

DOI:10.1007/978-3-540-72927-3_35

Abernethy, Jacob, Bartlett, Peter L., & Rakhlin, Alexander (2007) Multitask learning with expert advice. Learning Theory, 4539, pp. 484-498.

Direitos

Copyright 2007 Springer

Fonte

Faculty of Science and Technology; Mathematical Sciences

Palavras-Chave #080100 ARTIFICIAL INTELLIGENCE AND IMAGE PROCESSING #problem of prediction #algorithm
Tipo

Journal Article