Publication | Open Access
Comparative analysis of evolving software systems using the Gini coefficient
79
Citations
20
References
2009
Year
Unknown Venue
Software MaintenanceEngineeringSoftware MetricsSoftware SystemsSoftware EngineeringBusiness AnalyticsMany MetricsSoftware AnalysisEmpirical Software Engineering ResearchData ScienceSystems EngineeringSoftware AspectSoftware Engineering EconomicsComparative AnalysisStatisticsQuantitative ManagementSoftware EconomicsSoftware MeasurementDesignComputer ScienceGini CoefficientSoftware DesignSoftware EvolutionProgram AnalysisSoftware TestingSoftware MetricSystem Software
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 ldquoaveragerdquo 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 higher-order 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.
| Year | Citations | |
|---|---|---|
Page 1
Page 1