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Cognitive Deep Neural Networks prediction method for software fault tendency module based on Bound Particle Swarm Optimization

机译:基于束缚粒子群算法的软件故障趋势模块的认知神经网络预测方法

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摘要

Identification of module fault tendency is greatly important for cost reduction and software development effectiveness. A DNN (Deep Neural Networks) prediction method for software fault tendency module based on BPSO (Bound Particle Swarm Optimization) dimensionality reduction was proposed in the paper. Firstly, the calculation framework of the DNN prediction algorithm for software fault tendency module based on BPSO dimensionality reduction and 21 software fault measurement indexes as well as the normalization processing method of these index values were provided in the paper; then, the particle swarm optimization algorithm was adopted for the dimensionality reduction of software fault data set, and the particle position was represented by binary (0 or 1) character string to simplify data processing; then, the DNN algorithm was adopted to predict software fault tendency module; finally, the simulation experiments were implemented in four standard test sets-PC1, JM1, KC1 and KC3 to verify the performance advantage of the algorithm. (C) 2018 Elsevier B.V. All rights reserved.
机译:识别模块故障趋势对于降低成本和提高软件开发效率非常重要。提出了一种基于BPSO降维的软件故障趋势模块DNN(Deep Neural Networks)预测方法。首先,提出了基于BPSO降维和21个软件故障测量指标的软件故障趋势模块DNN预测算法的计算框架以及这些指标值的归一化处理方法。然后,采用粒子群算法对软件故障数据集进行降维,并用二进制(0或1)字符串表示粒子位置,以简化数据处理。然后,采用DNN算法预测软件故障趋势模块。最后,在4个标准测试集PC1,JM1,KC1和KC3中进行了仿真实验,以验证算法的性能优势。 (C)2018 Elsevier B.V.保留所有权利。

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