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Training genetic programming classifiers by vicinal-risk minimization

Version 2 2024-03-12, 13:52
Version 1 2024-03-01, 09:24
journal contribution
posted on 2024-03-12, 13:52 authored by Ji Ni, Peter Rockett

We propose and motivate the use of vicinal-risk minimization (VRM) for training genetic programming classifiers. We demonstrate that VRM has a number of attractive properties and demonstrate that it has a better correlation withgeneralization error compared to empirical risk minimization (ERM) so is more likely to lead to better generalization performance, in general. From the results of statistical tests over a range of real and synthetic datasets, we further demonstrate that VRM yields consistently superior generalization errors compared to conventional ERM.

History

School affiliated with

  • School of Computer Science (Research Outputs)

Publication Title

Genetic Programming and Evolvable Machine

Volume

16

Issue

1

Pages/Article Number

3-25

Publisher

Springer verlag

ISSN

1389-2576

eISSN

1573-7632

Date Submitted

2015-10-23

Date Accepted

2014-05-13

Date of First Publication

2014-06-03

Date of Final Publication

2015-03-01

Date Document First Uploaded

2015-10-19

ePrints ID

19206

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