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A study of early stopping, ensembling, and patchworking for cascade correlation neural networks

Version 4 2024-03-12, 12:14
Version 3 2023-10-29, 08:53
journal contribution
posted on 2024-03-12, 12:14 authored by Mike Riley, Karl W. Jenkins, Chris P. Thompson
<p>The constructive topology of the cascade correlation algorithm makes it a popular choice for many researchers wishing to utilize neural networks. However, for multimodal problems, the mean squared error of the approximation increases significantly as the number of modes increases. The components of this error will comprise both bias and variance and we provide formulae for estimating these values from mean squared errors alone. We achieve a near threefold reduction in the overall error by using early stopping and ensembling. Also described is a new subdivision technique that we call patchworking. Patchworking, when used in combination with early stopping and ensembling, can achieve an order of magnitude improvement in the error. Also presented is an approach for validating the quality of a neural network’s training, without the explicit use of a testing dataset.</p>

History

School affiliated with

  • School of Engineering (Research Outputs)

Publication Title

International Journal of Applied Mathematics

Volume

40

Issue

4

Pages/Article Number

307-316

Publisher

IAENG / International Association of Engineers/Newswood Limited

ISSN

1992-9978

eISSN

1992-9986

Date Submitted

2013-10-07

Date Accepted

2010-10-01

Date of First Publication

2010-10-01

Date of Final Publication

2010-10-01

Date Document First Uploaded

2013-10-05

ePrints ID

12080

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