Evolutionary Computation for the Automated Design of Category Functions for Fuzzy ART: An Initial Exploration
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- @InProceedings{Elnabarawy:2017:GECCO,
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author = "Islam Elnabarawy and Daniel R. Tauritz and
Donald C. Wunsch",
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title = "Evolutionary Computation for the Automated Design of
Category Functions for Fuzzy {ART}: An Initial
Exploration",
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booktitle = "Proceedings of the Genetic and Evolutionary
Computation Conference Companion",
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series = "GECCO '17",
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year = "2017",
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isbn13 = "978-1-4503-4939-0",
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address = "Berlin, Germany",
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pages = "1133--1140",
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size = "8 pages",
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URL = "http://doi.acm.org/10.1145/3067695.3082056",
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DOI = "doi:10.1145/3067695.3082056",
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acmid = "3082056",
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publisher = "ACM",
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publisher_address = "New York, NY, USA",
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keywords = "genetic algorithms, genetic programming, adaptive
resonance theory, adjusted rand index, clustering,
evolutionary computing, hyper-heuristics, unsupervised
learning",
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month = "15-19 " # jul,
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abstract = "Fuzzy Adaptive Resonance Theory (ART) is a classic
unsupervised learning algorithm. Its performance on a
particular clustering problem is sensitive to the
suitability of the category function for said problem.
However, classic Fuzzy ART employs a fixed category
function and thus is unable to benefit from the
potential to adjust its category function. This paper
presents an exploration into employing evolutionary
computation for the automated design of category
functions to obtain significantly enhanced Fuzzy ART
performance through tailoring to specific problem
classes. We employ a genetic programming powered
hyper-heuristic approach where the category functions
are constructed from a set of primitives constituting
those of the original Fuzzy ART category function as
well as additional hand-selected primitives. Results
are presented for a set of experiments on benchmark
classification tasks from the UCI Machine Learning
Repository demonstrating that tailoring Fuzzy ART's
category function can achieve statistically significant
superior performance on the testing datasets in
stratified 10-fold cross-validation procedures. We
conclude with discussing the results and placing them
in the context of being a first step towards automating
the design of entirely new forms of ART.",
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notes = "Also known as
\cite{Elnabarawy:2017:ECA:3067695.3082056} GECCO-2017 A
Recombination of the 26th International Conference on
Genetic Algorithms (ICGA-2017) and the 22nd Annual
Genetic Programming Conference (GP-2017)",
- }
Genetic Programming entries for
Islam Elnabarawy
Daniel R Tauritz
Donald C Wunsch II
Citations