Software metrics model for integrating quality control and prediction

N. Schneidewind
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引用次数: 58

Abstract

A model is developed that is used to validate and apply metrics for quality control and quality prediction, with the objective of using metrics as early indicators of software quality problems. Metrics and quality factor data from the Space Shuttle flight software are used as an example. Our approach is to integrate quality control and prediction in a single model and to validate metrics with respect to a quality factor. Boolean discriminant functions (BDFs) were developed for use in the quality control and quality prediction process. BDFs provide good accuracy for classifying low quality software because they include additional information for discriminating quality: critical values. Critical values are threshold values of metrics that are used to either accept or reject modules when the modules are inspected during the quality control process. A series of nonparametric statistical methods is also used in the method presented. It is important to perform a marginal analysis when making a decision about how many metrics to use in the quality control and prediction process. We found that certain metrics are dominant in their effects on classifying quality and that additional metrics are not needed to accurately classify quality. This effect is called dominance. Related to the property of dominance is the property of concordance, which is the degree to which a set of metrics produces the same result in classifying software quality. A high value of concordance implies that additional metrics will not make a significant contribution to accurately classifying quality; hence, these metrics are redundant.
用于集成质量控制和预测的软件度量模型
开发了一个模型,用于验证和应用质量控制和质量预测的度量标准,其目标是使用度量标准作为软件质量问题的早期指示器。以航天飞机飞行软件中的度量和质量因子数据为例。我们的方法是在单个模型中集成质量控制和预测,并根据质量因素验证度量标准。提出了布尔判别函数(bdf)用于质量控制和质量预测过程。bdf为分类低质量软件提供了良好的准确性,因为它们包含了用于区分质量的附加信息:临界值。临界值是度量标准的阈值,用于在质量控制过程中检查模块时接受或拒绝模块。该方法还采用了一系列非参数统计方法。当决定在质量控制和预测过程中使用多少度量标准时,执行边际分析是很重要的。我们发现某些指标在它们对质量分类的影响中占主导地位,并且不需要额外的指标来准确地对质量进行分类。这种效应被称为优势。与优势属性相关的是一致性属性,它是一组度量在对软件质量进行分类时产生相同结果的程度。一致性的高值意味着额外的指标不会对准确分类质量做出重大贡献;因此,这些指标是多余的。
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