Genetic programming-based evolution of classification trees for decision support in banking sector
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- @Article{journals/ijkesdp/KotechaG16,
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author = "Radhika Kotecha and Sanjay Garg",
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title = "Genetic programming-based evolution of classification
trees for decision support in banking sector",
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journal = "International Journal of Knowledge Engineering and
Soft Data Paradigms",
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year = "2016",
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number = "3/4",
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volume = "5",
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pages = "186--204",
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keywords = "genetic algorithms, genetic programming,
decision-making, data mining, classification, decision
trees, evolutionary algorithms",
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bibsource = "DBLP,
http://dblp.uni-trier.de/db/journals/ijkesdp/ijkesdp5.html#KotechaG16",
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DOI = "doi:10.1504/IJKESDP.2016.10004137",
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abstract = "Credit decision-making is a vital process in the
banking sector as it helps to reduce losses by
identifying non-creditable individuals. Classification
algorithms in data mining provide accurate results in
the aforementioned area. But, such real-world lending
environments require classification results to be easy
to interpret. The lack of explicability of several
existing classifiers makes banks reluctant in using
them. An ideal classifier needs to be accurate with
interpretability encapsulated within it. Decision trees
are accurate, but for large datasets, the tree becomes
very large and may not be comprehensible. Genetic
programming (GP) is widely applied for solving
classification problems since it can produce smaller
trees by using tree-size, as fitness measure or by
depth-limiting the trees. Hence, we propose an
algorithm named GPeCT that merges decision tree and GP
to produce a near-optimal decision tree classifier. We
demonstrate the performance of GPeCT through
experiments on large datasets from banking and other
domains",
- }
Genetic Programming entries for
Radhika N Kotecha
Sanjay Garg
Citations