Multi-class pattern classification using single, multi-dimensional feature-space feature extraction evolved by multi-objective genetic programming and its application to network intrusion detection
Created by W.Langdon from
gp-bibliography.bib Revision:1.8120
- @Article{Badran:2011:GPEM,
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author = "Khaled Badran and Peter Rockett",
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title = "Multi-class pattern classification using single,
multi-dimensional feature-space feature extraction
evolved by multi-objective genetic programming and its
application to network intrusion detection",
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journal = "Genetic Programming and Evolvable Machines",
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year = "2012",
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volume = "13",
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number = "1",
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pages = "33--63",
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month = mar,
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note = "Special Section on Evolutionary Algorithms for Data
Mining",
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keywords = "genetic algorithms, genetic programming, Multi-class
pattern classification, Feature extraction, Feature
selection, Multi-objective genetic programming",
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ISSN = "1389-2576",
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DOI = "doi:10.1007/s10710-011-9143-4",
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size = "31 pages",
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abstract = "In this paper we investigate using multi-objective
genetic programming to evolve a feature extraction
stage for multiple-class classifiers. We find mappings
which transform the input space into a new,
multi-dimensional decision space to increase the
discrimination between all classes; the number of
dimensions of this decision space is optimised as part
of the evolutionary process. A simple and fast
multi-class classifier is then implemented in this
multi-dimensional decision space. Mapping to a single
decision space has significant computational advantages
compared to k -class-to-2-class decompositions; a key
design requirement in this work has been the ability to
incorporate changing priors and/or costs associated
with mislabelling without retraining. We have employed
multi-objective optimization in a Pareto framework
incorporating solution complexity as an independent
objective to be minimised in addition to the main
objective of the misclassification error. We thus give
preference to simpler solutions which tend to
generalise well on unseen data, in accordance with
Occam's Razor. We obtain classification results on a
series of benchmark problems which are essentially
identical to previous, more complex decomposition
approaches. Our solutions are much simpler and
computationally attractive as well as able to readily
incorporate changing priors/costs. In addition, we have
also applied our approach to the KDD-99 intrusion
detection dataset and obtained results which are highly
competitive with the KDD-99 Cup winner but with a
significantly simpler classification framework.",
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affiliation = "Vision and Information Engineering Research Group,
Department of Electronic and Electrical Engineering,
The University of Sheffield, Mappin Street, Sheffield,
S1 3D UK",
- }
Genetic Programming entries for
Khaled M S Badran
Peter I Rockett
Citations