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首页> 外文期刊>International Journal of Business Intelligence and Data Mining >An empirical approach for complexity reduction and fault prediction for software quality attribute
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An empirical approach for complexity reduction and fault prediction for software quality attribute

机译:软件质量属性的复杂度降低和故障预测的经验方法

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>Designing the high-quality software is a difficult one due to the high complexity and fault prone class. To reduce the complexity and predict the fault-prone class in the object orient software design proposed a new empirical approach. This proposed approach concentrates more on to increase the software quality in the object oriented programming structures. This technique will collect the dataset and metric values from CK-based metrics. And then complexity will be calculated based on the weighted approach. The fault prediction will be done, based on the low usage of the dataset and high complexity dataset. This helps to increase the software quality. In simulation section, the proposed approach has performed and analysed the parameters such as accuracy, fairness, recall, prediction rate and efficiency. The experimental results have shown that the proposed approach increases the prediction rate, accuracy and efficiency.
机译:>由于高复杂性和易于出错的类,设计高质量软件是一项困难的工作。为了降低复杂度并预测面向对象软件设计中的易错类,提出了一种新的经验方法。该提议的方法更多地集中于提高面向对象的编程结构中的软件质量。该技术将从基于CK的指标中收集数据集和指标值。然后,将基于加权方法计算复杂度。将基于数据集的低使用率和高复杂度的数据集进行故障预测。这有助于提高软件质量。在仿真部分,所提出的方法已经执行并分析了诸如准确性,公平性,召回率,预测率和效率等参数。实验结果表明,该方法提高了预测率,准确性和效率。

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