Failure prediction of dotcom companies using neural network-genetic programming hybrids
Created by W.Langdon from
gp-bibliography.bib Revision:1.8120
- @Article{Ravisankar20101257,
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author = "P. Ravisankar and V. Ravi and I. Bose",
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title = "Failure prediction of dotcom companies using neural
network-genetic programming hybrids",
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journal = "Information Sciences",
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volume = "180",
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number = "8",
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pages = "1257--1267",
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year = "2010",
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ISSN = "0020-0255",
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DOI = "doi:10.1016/j.ins.2009.12.022",
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URL = "http://www.sciencedirect.com/science/article/B6V0C-4Y34WFM-5/2/cbd0cd0edc9c64770138aba7a79b9c8a",
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keywords = "genetic algorithms, genetic programming, Dotcom
companies, Failure prediction, Feature selection,
Multilayer feed forward neural network, Probabilistic
neural network, t-Statistic, f-Statistic",
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abstract = "This paper presents novel neural network-genetic
programming hybrids to predict the failure of dotcom
companies. These hybrids comprise multi-layer feed
forward neural network (MLFF), probabilistic neural
network (PNN), rough sets (RS) and genetic programming
(GP) in a two-phase architecture. In each hybrid, one
technique is used to perform feature selection in the
first phase and another one is used as a classifier in
the second phase. Further t-statistic and f-statistic
are also used separately for feature selection in the
first phase. In each of these cases, top 10 features
are selected and fed to the classifier. Also, the NN-GP
hybrids are compared with MLFF, PNN and GP in their
stand-alone mode without feature selection. The dataset
analysed here is collected from Wharton Research Data
Services (WRDS). It consists of 240 dotcom companies of
which 120 are failed and 120 are healthy. Ten-fold
cross-validation is performed throughout the study.
Results in terms of average accuracy, average
sensitivity, average specificity and area under the
receiver operating characteristic curve (AUC) indicate
that the GP outperformed all the techniques with or
without feature selection. The superiority of GP-GP is
demonstrated by t-test at 10percent level of
significance. Furthermore, the results are much better
than those reported in previous studies on the same
dataset.",
- }
Genetic Programming entries for
P Ravi Shankar
Vadlamani Ravi
Indranil Bose
Citations