On the data consumption benefits of accepting increased uncertainty


Autoria(s): Martin, Eric; Sharma, Arun; Stephan, Frank
Data(s)

2007

Resumo

In the context of learning paradigms of identification in the limit, we address the question: why is uncertainty sometimes desirable? We use mind change bounds on the output hypotheses as a measure of uncertainty and interpret ‘desirable’ as reduction in data memorization, also defined in terms of mind change bounds. The resulting model is closely related to iterative learning with bounded mind change complexity, but the dual use of mind change bounds — for hypotheses and for data — is a key distinctive feature of our approach. We show that situations exist where the more mind changes the learner is willing to accept, the less the amount of data it needs to remember in order to converge to the correct hypothesis. We also investigate relationships between our model and learning from good examples, set-driven, monotonic and strong-monotonic learners, as well as class-comprising versus class-preserving learnability.

Identificador

http://eprints.qut.edu.au/44599/

Publicador

Elsevier BV

Relação

DOI:10.1016/j.tcs.2007.03.037

Martin, Eric, Sharma, Arun, & Stephan, Frank (2007) On the data consumption benefits of accepting increased uncertainty. Theoretical Computer Science, 382(3), pp. 170-182.

Fonte

Division of Research and Commercialisation

Palavras-Chave #080200 COMPUTATION THEORY AND MATHEMATICS #080300 COMPUTER SOFTWARE #170200 COGNITIVE SCIENCE #Inductive inference; Mind change bounds; Iterative learning; Memory limitations
Tipo

Journal Article