Understanding Bank Failure: A Close Examination of Rules Created by Genetic Programming
Created by W.Langdon from
gp-bibliography.bib Revision:1.7954
- @InProceedings{Garcia-Almanza:2010:CERMA,
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author = "Alma Lilia Garcia-Almanza and
Biliana Alexandrova-Kabadjova and Serafin Martinez-Jaramillo",
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title = "Understanding Bank Failure: A Close Examination of
Rules Created by Genetic Programming",
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booktitle = "Electronics, Robotics and Automotive Mechanics
Conference (CERMA), 2010",
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year = "2010",
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month = "28 " # sep # "-" # oct # " 1",
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pages = "34--39",
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abstract = "This paper presents a novel method to predict
bankruptcy, using a Genetic Programming (GP) based
approach called Evolving Decision Rules (EDR). In order
to obtain the optimum parameters of the classifying
mechanism, we use a data set, obtained from the US
Federal Deposit Insurance Corporation (FDIC). The set
consists of limited financial institutions' data,
presented as variables widely used to detect bank
failure. The outcome is a set of comprehensible
decision rules, which allows to identify cases of
bankruptcy. Further, the reliability of those rules is
measured in terms of the true and false positive rate,
calculated over the whole data set and plot over the
Receiving Operating Characteristic (ROC) space. In
order to test the accuracy performance of the
mechanism, we elaborate two experiments: the first,
aimed to test the degree of the variables' usefulness,
provides a quantitative and a qualitative analysis. The
second experiment completed over 1000 different
re-sampled cases is used to measure the performance of
the approach. To our knowledge this is the first
computational technique in this field able to give
useful insights of the method's predictive structure.
The main contributions of this work are three: first,
we want to bring to the arena of bankruptcy prediction
a competitive novel method which in pure performance
terms is comparable to state of the art methods
recently proposed in similar works, second, this method
provides the additional advantage of transparency as
the generated rules are fully interpretable in terms of
simple financial ratios, third and final, the proposed
method includes cutting edge techniques to handle
highly unbalanced samples, something that is very
common in bankruptcy applications.",
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keywords = "genetic algorithms, genetic programming, bank failure
detection, bankruptcy prediction, data set, evolving
decision rules, financial ratio, receiving operating
characteristic space, banking, sensitivity analysis",
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DOI = "doi:10.1109/CERMA.2010.14",
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notes = "Also known as \cite{5692308}",
- }
Genetic Programming entries for
Alma Lilia Garcia Almanza
Biliana Alexandrova-Kabadjova
Serafin Martinez Jaramillo
Citations