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首页> 外文期刊>The international arab journal of information technology >Software Defect Prediction in Large Space Systems through Hybrid Feature Selection and Classification
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Software Defect Prediction in Large Space Systems through Hybrid Feature Selection and Classification

机译:基于混合特征选择和分类的大型空间系统软件缺陷预测

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Data mining and machine learning techniques have been used in several scientific applications including software fault predictions in large space systems. State-of the-art research revealed that existing space systems succumb to enigmatic software faults leading to critical loss of life and capital. This article presents a novel approach to solve this issue of overlooking software faults by utilizing both features selection and classification techniques to accurately predict software defects in aerospace systems. The main objective was to identify the preeminent feature selection and prediction technique that enhanced the software fault prediction accuracy with the optimal set of features. The investigations affirmed that a novel hybrid feature selection method revealed the most optimal set of predictive features although no particular predictive technique was suitable to predict faults in all space system datasets. Besides, the exploration of data mining techniques in fault prediction on the NASA Lunar space system software data clearly portrayed the improved fault prediction accuracy (similar to 82% to similar to 98%) with the feature set selected by the proposed Hybrid Feature Selection method. Also, the random sub sampling method revealed an improved mean Matthew's Correlation Coefficient (MCC) and accuracy ranging from similar to 0.7 to similar to 0.9 and similar to 86% to similar to 98% respectively. This we believe generates further scope for future investigations on the most contributing space system features for fault prediction thus enabling design of aerospace systems with minimal faults and enhanced performance.
机译:数据挖掘和机器学习技术已用于多种科学应用中,包括大型空间系统中的软件故障预测。最新的研究表明,现有的太空系统会屈服于神秘的软件故障,从而导致严重的生命和资金损失。本文提出了一种新颖的方法,通过利用特征选择和分类技术来准确预测航空航天系统中的软件缺陷,从而解决了忽略软件故障的问题。主要目标是确定卓越的特征选择和预测技术,以最佳的特征集提高软件故障预测的准确性。研究证实,尽管没有特殊的预测技术适合预测所有空间系统数据集中的断层,但一种新颖的混合特征选择方法揭示了最佳的预测特征集。此外,对NASA月球空间系统软件数据进行故障预测的数据挖掘技术的探索清楚地表明,通过提出的混合特征选择方法选择的特征集可以提高故障预测的准确性(大约从82%到98%)。而且,随机子采样方法显示出改进的平均马修相关系数(MCC)和准确度,分别从相似到0.7到相似到0.9和相似到86%到相似到98%。我们相信,这为将来对最有贡献的空间系统特征进行故障预测的研究提供了进一步的空间,从而使航空航天系统的设计具有最小的故障并提高了性能。

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