Online Learning of Non-stationary Sequences


Autoria(s): Monteleoni, Claire
Data(s)

20/10/2004

20/10/2004

12/06/2003

Resumo

We consider an online learning scenario in which the learner can make predictions on the basis of a fixed set of experts. The performance of each expert may change over time in a manner unknown to the learner. We formulate a class of universal learning algorithms for this problem by expressing them as simple Bayesian algorithms operating on models analogous to Hidden Markov Models (HMMs). We derive a new performance bound for such algorithms which is considerably simpler than existing bounds. The bound provides the basis for learning the rate at which the identity of the optimal expert switches over time. We find an analytic expression for the a priori resolution at which we need to learn the rate parameter. We extend our scalar switching-rate result to models of the switching-rate that are governed by a matrix of parameters, i.e. arbitrary homogeneous HMMs. We apply and examine our algorithm in the context of the problem of energy management in wireless networks. We analyze the new results in the framework of Information Theory.

Formato

48 p.

1815576 bytes

911860 bytes

application/postscript

application/pdf

Identificador

AITR-2003-011

http://hdl.handle.net/1721.1/7107

Idioma(s)

en_US

Relação

AITR-2003-011

Palavras-Chave #AI #online learning #relative loss bounds #switching dynamics #wireless #802.11