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Empirical Analysis of Object-Oriented Design Metrics for Predicting High and Low Severity Faults  |
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Software fault prediction: A literature review and current trends  |
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Data Mining Static Code Attributes to Learn Defect Predictors  |
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Data Mining Static Code Attributes to Learn Defect Predictors  |
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Measuring the prediction error. A comparison of cross-validation, bootstrap and covariance penalty methods  |
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