Comparative analysis of evolving software systems using the Gini coefficient

Rajesh Vasa, M. Lumpe, P. Branch, Oscar Nierstrasz
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引用次数: 94

Abstract

Software metrics offer us the promise of distilling useful information from vast amounts of software in order to track development progress, to gain insights into the nature of the software, and to identify potential problems. Unfortunately, however, many software metrics exhibit highly skewed, non-Gaussian distributions. As a consequence, usual ways of interpreting these metrics — for example, in terms of “average” values — can be highly misleading. Many metrics, it turns out, are distributed like wealth — with high concentrations of values in selected locations. We propose to analyze software metrics using the Gini coefficient, a higherorder statistic widely used in economics to study the distribution of wealth. Our approach allows us not only to observe changes in software systems efficiently, but also to assess project risks and monitor the development process itself. We apply the Gini coefficient to numerous metrics over a range of software projects, and we show that many metrics not only display remarkably high Gini values, but that these values are remarkably consistent as a project evolves over time.
用基尼系数对演化中的软件系统进行比较分析
软件度量为我们提供了从大量软件中提取有用信息的承诺,以便跟踪开发进度,深入了解软件的本质,并识别潜在的问题。然而,不幸的是,许多软件指标表现出高度倾斜的非高斯分布。因此,通常解释这些指标的方法——例如,用“平均”值来解释——可能极具误导性。事实证明,许多指标像财富一样分布——价值高度集中在选定的地点。我们建议使用基尼系数来分析软件度量,基尼系数是一种在经济学中广泛用于研究财富分配的高阶统计量。我们的方法不仅允许我们有效地观察软件系统中的变化,而且还允许我们评估项目风险并监视开发过程本身。我们将基尼系数应用于一系列软件项目的众多指标,我们表明,许多指标不仅显示出非常高的基尼值,而且随着项目的发展,这些值非常一致。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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