An evolutionary algorithm for classifier and combination rule selection in multiple classifier systems
An evolutionary algorithm for classifier and combination rule selection in multiple classifier systems
We introduce a multiple classifier system which incorporates a genetic algorithm in order to simultaneously and dynamically select not only the participating classifiers but also the combination rule to be used. In this paper we focus on exploring the efficiency of such an evolutionary algorithm with respect to the behaviour of the resulting multi-expert configurations. To this end we initially test the proposed system on an artificially generated dataset, and then on a problem drawn from the character recognition domain. Subsequently we proceed to investigate the performance of our system not only, in comparison to that of its constituent classifiers, but also in comparison to a number of alternative aggregation strategies ranging from a simple random selection scheme to the well-known "bagging" and "boosting" algorithms. Our results indicate that significant gains can be obtained by integrating an evolutionary algorithm into the multi-classifier systems design process.
771-774
Sirlantzis, Konstantinos
814fc7fe-68c0-45cf-ac7d-b9d367c2f39e
Fairhurst, Michael
6a82d154-93fe-4657-bcee-934d5c888192
Guest, Richard
93533dbd-b101-491b-83cc-39ccfdc18165
11 October 2002
Sirlantzis, Konstantinos
814fc7fe-68c0-45cf-ac7d-b9d367c2f39e
Fairhurst, Michael
6a82d154-93fe-4657-bcee-934d5c888192
Guest, Richard
93533dbd-b101-491b-83cc-39ccfdc18165
Sirlantzis, Konstantinos, Fairhurst, Michael and Guest, Richard
(2002)
An evolutionary algorithm for classifier and combination rule selection in multiple classifier systems.
In International Conference of Pattern Recognition (ICPR 2002).
.
(doi:10.1109/ICPR.2002.1048416).
Record type:
Conference or Workshop Item
(Paper)
Abstract
We introduce a multiple classifier system which incorporates a genetic algorithm in order to simultaneously and dynamically select not only the participating classifiers but also the combination rule to be used. In this paper we focus on exploring the efficiency of such an evolutionary algorithm with respect to the behaviour of the resulting multi-expert configurations. To this end we initially test the proposed system on an artificially generated dataset, and then on a problem drawn from the character recognition domain. Subsequently we proceed to investigate the performance of our system not only, in comparison to that of its constituent classifiers, but also in comparison to a number of alternative aggregation strategies ranging from a simple random selection scheme to the well-known "bagging" and "boosting" algorithms. Our results indicate that significant gains can be obtained by integrating an evolutionary algorithm into the multi-classifier systems design process.
This record has no associated files available for download.
More information
Published date: 11 October 2002
Identifiers
Local EPrints ID: 489410
URI: http://eprints.soton.ac.uk/id/eprint/489410
PURE UUID: c9dc74c9-8883-416c-89bf-5107eafc2a91
Catalogue record
Date deposited: 23 Apr 2024 17:16
Last modified: 24 Apr 2024 02:10
Export record
Altmetrics
Contributors
Author:
Konstantinos Sirlantzis
Author:
Michael Fairhurst
Author:
Richard Guest
Download statistics
Downloads from ePrints over the past year. Other digital versions may also be available to download e.g. from the publisher's website.
View more statistics