Article ID Journal Published Year Pages File Type
495200 Applied Soft Computing 2015 9 Pages PDF
Abstract

•We present a hybrid method using ANN and QPSO for software fault-prone prediction.•ANN is used for the classification of software modules.•QPSO is controlled more easily than PSO.

The identification of a module's fault-proneness is very important for minimizing cost and improving the effectiveness of the software development process. How to obtain the correlation between software metrics and module's fault-proneness has been the focus of much research. This paper presents the application of hybrid artificial neural network (ANN) and Quantum Particle Swarm Optimization (QPSO) in software fault-proneness prediction. ANN is used for classifying software modules into fault-proneness or non fault-proneness categories, and QPSO is applied for reducing dimensionality. The experiment results show that the proposed prediction approach can establish the correlation between software metrics and modules’ fault-proneness, and is very simple because its implementation requires neither extra cost nor expert's knowledge. Proposed prediction approach can provide the potential software modules with fault-proneness to software developers, so developers only need to focus on these software modules, which may minimize effort and cost of software maintenance.

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Related Topics
Physical Sciences and Engineering Computer Science Computer Science Applications
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