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Software Defect Prediction Model Based on Improved LLE-SVM

机译:基于改进LLE-SVM的软件缺陷预测模型

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A recent study namely software defect prediction model based on Local Linear Embedding and Support Vector Machines (LLE-SVM) has indicated that Support Vector Regression (SVR) has an interesting potential in the field of software defect prediction. However, the parameters optimization of LLE-SVM model is computationally expensive by using the grid search algorithm, resulting in a lower efficiency of the model; and it ignores the imbalance of data sets when using SVM classier to differentiate the defective class and non-defective class. Thus resulting in a lower prediction accuracy. To solve these problems in LLE-SVM model, we propose a new software defect prediction model based on the improved Locally Linear Embedding and Support Vector Machines (ILLE-SVM). ILLL -SVM model employed the coarse-to-fine grid search algorithm to search the optimal parameters. It ensured a high accuracy of the parameters and reduced the parameters optimizing time by gradually narrowing the search scope and enlarging the parameters step. As for the question that SVM suffers a performance bias in classification when data sets are unbalanced, we employed gird search algorithm to automatically set the reasonable weights of different class. The comparison between LLE-SVM model and ILLE-SVM model is experimentally verified on four NASA defect data sets. The results indicate that ILLE-SVM model can search the optimal parameters faster than LLE-SVM model and perform better than LLE-SVM in software defect prediction.
机译:最近的研究即基于本地线性嵌入和支持向量机(LLE-SVM)的软件缺陷预测模型已经指示支持向量回归(SVR)在软件缺陷预测领域具有有趣的潜力。但是,通过使用网格搜索算法,LLE-SVM模型的参数优化是计算昂贵的,导致模型的较低效率;并且它在使用SVM Claser时忽略数据集的不平衡,以区分缺陷的类和非缺陷类。因此导致预测准确性较低。为了解决LLE-SVM模型中的这些问题,我们提出了一种基于改进的局部线性嵌入和支持向量机(ILLE-SVM)的新软件缺陷预测模型。 ILLL -SVM模型采用粗致细网格搜索算法来搜索最佳参数。它确保了参数的高精度,并通过逐渐缩小搜索范围并放大参数步骤来减少参数优化时间。对于SVM在分类中遭受性能偏见的问题时,当数据集不平衡时,我们采用了GIRD搜索算法自动设置不同类的合理权重。 LLE-SVM模型与ILL-SVM模型之间的比较是在四个NASA缺陷数据集上进行实验验证的。结果表明,Ille-SVM模型可以比LLE-SVM模型更快地搜索最佳参数,并且在软件缺陷预测中比LLE-SVM更好。

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