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Machine learning approach for quality assessment and prediction in large software organizations

机译:大型软件组织中用于质量评估和预测的机器学习方法

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The importance of software in everyday products and services has been on constant rise and so is the complexity of software. In face of this rising complexity and our dependence on software - measuring, maintaining and increasing software quality is of critical importance. Software metrics provide a quantitative means to measure and thus control various attributes of software systems. In the paradigm of machine learning, software quality prediction can be cast as a classification or concept learning problem. In this paper we provide a general framework for applying machine learning approaches for assessment and prediction of software quality in large software organizations. Using ISO 15939 measurement information model we show how different software metrics can be used to build software quality model which can be used for quality assessment and prediction that satisfies the information need of these organizations with respect to quality. We also document how machine learning approaches can be effectively used for such evaluation.
机译:软件在日常产品和服务中的重要性不断提高,软件的复杂性也在不断提高。面对日益增加的复杂性以及我们对软件的依赖,测量,维护和提高软件质量至关重要。软件度量标准提供了一种量化手段,可以测量并控制软件系统的各种属性。在机器学习的范式中,软件质量预测可以看作是分类或概念学习问题。在本文中,我们为将机器学习方法应用于大型软件组织中的软件质量评估和预测提供了一个通用框架。使用ISO 15939测量信息模型,我们展示了如何使用不同的软件指标来构建软件质量模型,该模型可用于质量评估和预测,从而满足这些组织在质量方面的信息需求。我们还记录了如何将机器学习方法有效地用于此类评估。

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