Point-wise confidence interval estimation by neural networks: A comparative study based on automotive engine calibration.


Autoria(s): Lowe, David; Zapart, Krzysztof
Data(s)

01/03/1999

Resumo

In developing neural network techniques for real world applications it is still very rare to see estimates of confidence placed on the neural network predictions. This is a major deficiency, especially in safety-critical systems. In this paper we explore three distinct methods of producing point-wise confidence intervals using neural networks. We compare and contrast Bayesian, Gaussian Process and Predictive error bars evaluated on real data. The problem domain is concerned with the calibration of a real automotive engine management system for both air-fuel ratio determination and on-line ignition timing. This problem requires real-time control and is a good candidate for exploring the use of confidence predictions due to its safety-critical nature.

Formato

application/pdf

Identificador

http://eprints.aston.ac.uk/1226/1/NCRG_98_007.pdf

Lowe, David and Zapart, Krzysztof (1999). Point-wise confidence interval estimation by neural networks: A comparative study based on automotive engine calibration. Neural Computing and Applications, 8 (1), pp. 77-85.

Relação

http://eprints.aston.ac.uk/1226/

Tipo

Article

PeerReviewed