A Multiobjective Genetic Programming-Based Ensemble for Simultaneous Feature Selection and Classification
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- @Article{Nag:2015:Cybernetics,
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author = "Kaustuv Nag and Nikhil R. Pal",
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journal = "IEEE Transactions on Cybernetics",
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title = "A Multiobjective Genetic Programming-Based Ensemble
for Simultaneous Feature Selection and Classification",
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year = "2015",
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keywords = "genetic algorithms, genetic programming,
Classification, ensemble, feature selection (FS),
genetic programming (GP)",
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DOI = "doi:10.1109/TCYB.2015.2404806",
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ISSN = "2168-2267",
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size = "12 pages",
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abstract = "We present an integrated algorithm for simultaneous
feature selection (FS) and designing of diverse
classifiers using a steady state multiobjective genetic
programming (GP), which minimises three objectives: 1)
false positives (FPs); 2) false negatives (FNs); and 3)
the number of leaf nodes in the tree. Our method
divides a c-class problem into c binary classification
problems. It evolves c sets of genetic programs to
create c ensembles. During mutation operation, our
method exploits the fitness as well as unfitness of
features, which dynamically change with generations
with a view to using a set of highly relevant features
with low redundancy. The classifiers of i-th class
determine the {net belongingness} of an unknown data
point to the i'th class using a weighted voting scheme,
which makes use of the FP and FN mistakes made on the
training data. We test our method on eight microarray
and 11 text data sets with diverse number of classes
(from 2 to 44), large number of features (from 2000 to
49,151), and high feature-to-sample ratio (from 1.03 to
273.1). We compare our method with a bi-objective GP
scheme that does not use any FS and rule size reduction
strategy. It depicts the effectiveness of the proposed
FS and rule size reduction schemes. Furthermore, we
compare our method with four classification methods in
conjunction with six features selection algorithms and
full feature set. Our scheme performs the best for 380
out of 474 combinations of data sets, algorithm and FS
method.",
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notes = "Entered for 2016 HUMIES Also known as \cite{7055929}",
- }
Genetic Programming entries for
Kaustuv Nag
Nikhil Ranjan Pal
Citations