Towards an ensemble based system for predicting the number of software faults
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- @Article{Rathore:2017:ESA,
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author = "Santosh Singh Rathore and Sandeep Kumar",
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title = "Towards an ensemble based system for predicting the
number of software faults",
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journal = "Expert Systems with Applications",
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volume = "82",
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pages = "357--382",
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year = "2017",
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ISSN = "0957-4174",
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DOI = "doi:10.1016/j.eswa.2017.04.014",
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URL = "http://www.sciencedirect.com/science/article/pii/S0957417417302506",
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abstract = "Software fault prediction using different techniques
has been done by various researchers previously. It is
observed that the performance of these techniques
varied from dataset to dataset, which make them
inconsistent for fault prediction in the unknown
software project. On the other hand, use of ensemble
method for software fault prediction can be very
effective, as it takes the advantage of different
techniques for the given dataset to come up with better
prediction results compared to individual technique.
Many works are available on binary class software fault
prediction (faulty or non-faulty prediction) using
ensemble methods, but the use of ensemble methods for
the prediction of number of faults has not been
explored so far. The objective of this work is to
present a system using the ensemble of various learning
techniques for predicting the number of faults in given
software modules. We present a heterogeneous ensemble
method for the prediction of number of faults and use a
linear combination rule and a non-linear combination
rule based approaches for the ensemble. The study is
designed and conducted for different software fault
datasets accumulated from the publicly available data
repositories. The results indicate that the presented
system predicted number of faults with higher accuracy.
The results are consistent across all the datasets. We
also use prediction at level l (Pred(l)), and measure
of completeness to evaluate the results. Pred(l) shows
the number of modules in a dataset for which average
relative error value is less than or equal to a
threshold value l. The results of prediction at level l
analysis and measure of completeness analysis have also
confirmed the effectiveness of the presented system for
the prediction of number of faults. Compared to the
single fault prediction technique, ensemble methods
produced improved performance for the prediction of
number of software faults. Main impact of this work is
to allow better use of testing resources helping in
early and quick identification of most of the faults in
the software system.",
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keywords = "genetic algorithms, genetic programming, Software
fault prediction techniques, Empirical study, Linear
regression, Gradient boosting, Promise repository",
- }
Genetic Programming entries for
Santosh S Rathore
Sandeep Kumar
Citations