Software Defect Prediction Using Genetic Programming and Neural Networks
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- @Article{journals/ijossp/AkourM17,
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title = "Software Defect Prediction Using Genetic Programming
and Neural Networks",
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author = "Mohammed Akour and Wasen Yahya Melhem",
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journal = "International Journal of Open Source Software and
Processes",
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year = "2017",
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number = "4",
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volume = "8",
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pages = "32--51",
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keywords = "genetic algorithms, genetic programming, ANN, SBSE",
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ISSN = "1942-3926",
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DOI = "doi:10.4018/IJOSSP.2017100102",
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abstract = "This article describes how classification methods on
software defect prediction is widely researched due to
the need to increase the software quality and decrease
testing efforts. However, findings of past researches
done on this issue has not shown any classifier which
proves to be superior to the other. Additionally, there
is a lack of research that studies the effects and
accuracy of genetic programming on software defect
prediction. To find solutions for this problem, a
comparative software defect prediction experiment
between genetic programming and neural networks are
performed on four datasets from the NASA Metrics Data
repository. Generally, an interesting degree of
accuracy is detected, which shows how the metric-based
classification is useful. Nevertheless, this article
specifies that the application and usage of genetic
programming is highly recommended due to the detailed
analysis it provides, as well as an important feature
in this classification method which allows the viewing
of each attributes impact in the dataset.",
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notes = "Mohammed Akour (Department of Computer Information
Systems, Yarmouk University, Irbid, Jordan) and Wasen
Yahya Melhem (Yarmouk university, Irbid, Jordan)",
- }
Genetic Programming entries for
Mohammed Akour
Wasen Yahya Melhem
Citations