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Empirical Assessment of Machine Learning based Software Defect Prediction Techniques
13 years 10 months ago
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Venkata U. B. Challagulla, Farokh B. Bastani, I-Li
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25 Jun 2010
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25 Jun 2010
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Year
2005
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WORDS
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Venkata U. B. Challagulla, Farokh B. Bastani, I-Ling Yen, Raymond A. Paul
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Embedded Systems Study Group
Computer Vision