应用统计方法简化使用不完整数据样本构建的软件质量度量模型

Victor K. Y. Chan, W. E. Wong, T. Xie
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引用次数: 7

摘要

在构建软件度量模型的过程中,用于构建的数据样本中经常出现不完整的数据。此外,关于是否应该包括特定的预测指标的决定很可能是基于直觉或基于经验的假设,即预测指标对目标指标具有统计显著性的影响。然而,在模型构建之后,这种假设通常无法“回顾性地”验证,从而导致冗余的预测指标和/或不必要的预测指标复杂性。为了解决所有这些问题,作者早先推导了一种由k近邻(k-NN) imputation方法、统计假设检验和“拟合优度”准则组成的方法。虽然该方法已经成功地应用于软件工作度量模型,但它只是最近才应用于软件质量度量模型,这些模型通常受到更严重的数据不完整的影响。本文基于一个成功的案例研究记录了后一种应用
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of a Statistical Methodology to Simplify Software Quality Metric Models Constructed Using Incomplete Data Samples
During the construction of a software metric model, incomplete data often appear in the data sample used for the construction. Moreover, the decision on whether a particular predictor metric should be included is most likely based on an intuitive or experience-based assumption that the predictor metric has an impact on the target metric with a statistical significance. However, this assumption is usually not verifiable "retrospectively" after the model is constructed, leading to redundant predictor metric(s) and/or unnecessary predictor metric complexity. To solve all these problems, the authors have earlier derived a methodology consisting of the k-nearest neighbors (k-NN) imputation method, statistical hypothesis testing, and a "goodness-of fit" criterion. Whilst the methodology has been applied successfully to software effort metric models, it is applied only recently to software quality metric models which usually suffer from far more serious incomplete data. This paper documents the latter application based on a successful case study
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