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Maximum margin decision surfaces for increased generalisation in evolutionary decision tree learning
Date Issued
2011-04-27
Date Available
2012-02-21T16:52:41Z
Abstract
Decision tree learning is one of the most widely used and practical methods for inductive inference. We present a novel method that increases the generalisation of genetically-induced classification trees, which employ linear discriminants as the partitioning function at each internal node. Genetic Programming is employed to search the space of oblique decision trees. At the end of the evolutionary run, a (1+1) Evolution Strategy is used to geometrically optimise the boundaries in the decision space, which are represented by the linear discriminant functions. The evolutionary optimisation concerns maximising the decision-surface margin that is defined to be the smallest distance between the decision-surface and any of the samples. Initial empirical results of the application of our method to a series of datasets from the UCI repository suggest that model generalisation benefits from the margin maximisation, and that the new method is a very competent approach to pattern classification as compared to other learning algorithms.
Sponsorship
Science Foundation Ireland
Type of Material
Conference Publication
Publisher
Springer
Copyright (Published Version)
2011 Springer
Subject – LCSH
Genetic programming (Computer science)
Decision trees
Web versions
Language
English
Status of Item
Peer reviewed
Journal
Silva, S. et al. (eds.). Genetic Programming : 14th European Conference, EuroGP 2011, Torino, Italy, April 27-29, 2011. Proceedings
Conference Details
Paper presented at the 14th European Conference, EuroGP 2011, Torino, Italy, April 27-29, 2011.
ISBN
978-3-642-20406-7
This item is made available under a Creative Commons License
File(s)
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Name
EuroGP2011DraftVersion.pdf
Size
174.31 KB
Format
Adobe PDF
Checksum (MD5)
7d603f74b3946886ac7cb73a45549531
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