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Research on software defect prediction technology based on deep learning

机译:基于深度学习的软件缺陷预测技术研究

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To solve the problem that the traditional feature selection methods, such as PCA and LDA, are unable to get the nonlinear relationship between characteristics. Deep belief networks cannot eliminate the noise and missing value, which affect the accuracy of the software defect prediction (SDP) model. Not only the methods of feature selection, but data preprocessing and learning algorithm can also affect the precision of the defect prediction model. This thesis uses deep belief networks and SVM to construct an SDP model (DBN-SVM) to increase prediction precision. Using denoising autoencoders and SVM to build an SDP model (DA - SVM), compared with the DBN - SVM, DA - SVM model not only improves the prediction precision, but also enhance the robustness of the model. The thesis also proposes an SDP model framework which includes data preprocessing, feature selection and learning algorithm.
机译:为了解决传统特征选择方法,例如PCA和LDA的问题,无法获得特征之间的非线性关系。 深度信念网络不能消除噪声和缺失的值,这会影响软件缺陷预测(SDP)模型的准确性。 不仅是特征选择的方法,而且数据预处理和学习算法也可以影响缺陷预测模型的精度。 本文使用深度信念网络和SVM来构建SDP模型(DBN-SVM)以增加预测精度。 使用去噪AutoEncoders和SVM构建SDP模型(DA - SVM),与DBN-SVM相比,DA - SVM模型不仅提高了预测精度,而且还提高了模型的鲁棒性。 本文还提出了一种SDP模型框架,包括数据预处理,特征选择和学习算法。

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