Smart Operators for Inducing Colorectal Cancer Classification Trees with PonyGE2 Grammatical Evolution Python Package
Created by W.Langdon from
gp-bibliography.bib Revision:1.8010
- @InProceedings{Delgado-Osuna:2022:CEC,
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author = "Jose A. Delgado-Osuna and Carlos Garcia-Martinez and
Sebastian Ventura",
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title = "Smart Operators for Inducing Colorectal Cancer
Classification Trees with {PonyGE2} Grammatical
Evolution Python Package",
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booktitle = "2022 IEEE Congress on Evolutionary Computation (CEC)",
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year = "2022",
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editor = "Carlos A. Coello Coello and Sanaz Mostaghim",
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address = "Padua, Italy",
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month = "18-23 " # jul,
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keywords = "genetic algorithms, genetic programming,Grammatical
Evolution, Machine learning algorithms, Machine
learning, Evolutionary computation, Germanium,
Classification algorithms, Grammar, Task analysis,
Classification Trees, Heterogeneous features,
Colorectal Cancer",
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isbn13 = "978-1-6654-6708-7",
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DOI = "doi:10.1109/CEC55065.2022.9870361",
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abstract = "Colorectal cancer is a disease that affects many
people and requires a multidisciplinary approach,
involving significant human and economic resources. We
have been provided with a tabular dataset with 1.5
thousand cases of this disease. We are interested in
producing interpretable classifiers for predicting the
occurrence of complications. Grammatical Evolution has
extensively been used for machine learning problems. In
particular, it can be used to induce interpretable
decision trees, with the advantage of allowing the
practitioner to easily control the language by means of
the grammar. PonyGE2 [1], [2] is a Python package that
provides data scientists with Grammatical Evolution
algorithms, which can be configured to their needs
quite easily. In addition, and thanks to the benefits
of the Python programming language, PonyGE2 is
currently becoming more and more popular. However, the
capabilities of PonyGE2 for inducing classification
trees are still subject of improvement. In particular,
it only uses simple equality conditions and requires to
encode feature names and values with numbers. We have
developed some smart operators for PonyGE2, which, not
only enhance the framework in interpretability and
performance when dealing with our colo-rectal cancer
dataset, but also allows to produce results comparable
to those of the widely known heuristic methods C4.5 and
CART. We show how they could be applied to other
datasets, and how they affect performance in our
case.",
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notes = "Also known as \cite{9870361}",
- }
Genetic Programming entries for
Jose Antonio Delgado Osuna
Carlos Garcia-Martinez
Sebastian Ventura
Citations