Classification of defective modules using object-oriented metrics

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Date

2017

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Inderscience Enterprises Ltd.

Abstract

Software defect in today's era is crucial in the field of software engineering. Most of the organisations use various techniques to predict defects in their products before they are delivered. Defect prediction techniques help the organisations to use their resources effectively which results in lower cost and time requirements. There are various techniques that are used for predicting defects in software before it has to be delivered, e.g., clustering, neural networks, support vector machine (SVM). In this paper two defect prediction techniques: K-means clustering and multi-layer perceptron model (MLP) are compared. Both the techniques are implemented on different platforms. K-means clustering is implemented using WEKA tool and MLP is implemented using SPSS. The results are compared to find which algorithm produces better results. In this paper object-oriented metrics are used for predicting defects in the software. Copyright ? 2017 Inderscience Enterprises Ltd.

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Keywords

Defects, Forecasting, Neural networks, Software engineering, Support vector machines, Defect prediction, K-means clustering, Multi layer perceptron, Object oriented metrics, Software defects, Time requirements, WEKA, Weka tool, Object oriented programming

Citation

Singh, S., & Singla, R. (2017). Classification of defective modules using object-oriented metrics. International Journal of Intelligent Systems Technologies and Applications, 16(1), 1-13. doi: 10.1504/IJISTA.2017.081311

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