Hybrid Optimization-Based Neural Network Classifier for Software Defect Prediction

IF 0.8 Q4 COMPUTER SCIENCE, SOFTWARE ENGINEERING International Journal of Image and Graphics Pub Date : 2023-06-07 DOI:10.1142/s0219467824500451
M. Prashanthi, M. Chandra Mohan
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Abstract

The software is applied in various areas so the quality of the software is very important. The software defect prediction (SDP) is used to solve the software issues and enhance the quality. The robustness and reliability are the major concerns in the existing SDP approaches. Hence, in this paper, the hybrid optimization-based neural network (Optimized NN) is developed for the effective detection of the defects in the software. The two main steps involved in the Optimized NN-based SDP are feature selection and SDP utilizing Optimized NN. The data is fed forwarded to the feature selection module, where relief algorithm selects the significant features relating to the defect and no-defects. The features are fed to the SDP module, and the optimal tuning of NN classifier is obtained by the hybrid optimization developed by the integration of the social spider algorithm (SSA) and gray wolf optimizer (GWO). The comparative analysis of the developed prediction model reveals the effectiveness of the proposed method that attained the maximum accuracy of 93.64%, maximum sensitivity of 95.14%, maximum specificity of 99%, maximum [Formula: see text]-score of 93.53%, and maximum precision of 99% by considering the [Formula: see text]-fold.
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基于混合优化的神经网络分类器软件缺陷预测
该软件应用于各个领域,因此软件的质量非常重要。软件缺陷预测(SDP)用于解决软件问题和提高质量。鲁棒性和可靠性是现有SDP方法中主要关注的问题。因此,本文开发了基于混合优化的神经网络(Optimized NN)来有效地检测软件中的缺陷。基于优化神经网络的SDP涉及的两个主要步骤是特征选择和利用优化神经网络进行SDP。数据被转发到特征选择模块,在该模块中,起伏算法选择与缺陷和无缺陷相关的重要特征。将特征输入到SDP模块,并通过社会蜘蛛算法(SSA)和灰狼优化器(GWO)的集成开发的混合优化来获得NN分类器的最优调整。对所开发的预测模型的比较分析表明,通过考虑[公式:见正文]的倍数,所提出的方法的有效性达到了93.64%的最大准确度、95.14%的最大灵敏度、99%的最大特异度、93.53%的最大[公式:见图正文]得分和99%的最大精度。
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来源期刊
International Journal of Image and Graphics
International Journal of Image and Graphics COMPUTER SCIENCE, SOFTWARE ENGINEERING-
CiteScore
2.40
自引率
18.80%
发文量
67
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