A comparison of some soft computing methods for software fault prediction.

Expert Syst. Appl.(2015)

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摘要
Software fault prediction is implemented with ANN, SVM and ANFIS.First ANFIS implementation is applied to solve fault prediction problem.Parameters are discussed in neuro fuzzy approach.Experiments show that the application of ANFIS to the software fault prediction problem is highly reasonable. The main expectation from reliable software is the minimization of the number of failures that occur when the program runs. Determining whether software modules are prone to fault is important because doing so assists in identifying modules that require refactoring or detailed testing. Software fault prediction is a discipline that predicts the fault proneness of future modules by using essential prediction metrics and historical fault data. This study presents the first application of the Adaptive Neuro Fuzzy Inference System (ANFIS) for the software fault prediction problem. Moreover, Artificial Neural Network (ANN) and Support Vector Machine (SVM) methods, which were experienced previously, are built to discuss the performance of ANFIS. Data used in this study are collected from the PROMISE Software Engineering Repository, and McCabe metrics are selected because they comprehensively address the programming effort. ROC-AUC is used as a performance measure. The results achieved were 0.7795, 0.8685, and 0.8573 for the SVM, ANN and ANFIS methods, respectively.
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关键词
artificial neural networks,support vector machines
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