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Robust recurrent neural network modeling for software fault detection and correction prediction

机译:用于软件故障检测和纠正预测的鲁棒递归神经网络建模

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摘要

Software fault detection and correction processes are related although different, and they should be studied together. A practical approach is to apply software reliability growth models to model fault detection, and fault correction process is assumed to be a delayed process. On the other hand, the artificial neural networks model, as a data-driven approach, tries to model these two processes together with no assumptions. Specifically, feedforward backpropagation networks have shown their advantages over analytical models in fault number predictions. In this paper, the following approach is explored. First, recurrent neural networks are applied to model these two processes together. Within this framework, a systematic networks configuration approach is developed with genetic algorithm according to the prediction performance. In order to provide robust predictions, an extra factor characterizing the dispersion of prediction repetitions is incorporated into the performance function. Comparisons with feedforward neural networks and analytical models are developed with respect to a real data set.
机译:软件故障检测和纠正过程虽然有所不同,但却是相关的,因此应一起研究。一种实用的方法是将软件可靠性增长模型应用于故障检测模型,并且假定故障纠正过程是一个延迟过程。另一方面,作为一种数据驱动的方法,人工神经网络模型试图在没有任何假设的情况下对这两个过程进行建模。具体而言,前馈反向传播网络在故障数量预测中已显示出其优于分析模型的优势。在本文中,探索了以下方法。首先,将递归神经网络应用于对这两个过程进行建模。在此框架内,根据预测性能,采用遗传算法开发了系统的网络配置方法。为了提供可靠的预测,将表征预测重复离散的额外因素合并到性能函数中。与前馈神经网络和分析模型的比较是针对实际数据集进行的。

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