Ninth International Software Metrics Symposium (METRICS'03)
Learning Early Lifecycle IV&V Quality Indicators
Sydney, Australia
September 03-September 05
ISBN: 0-7695-1987-3
Traditional methods of generating quality code indicators (e.g. linear regression, decision tree induction) can be demonstrated to be inappropriate for IV&V purposes. IV&V is a unique aspect of the software lifecycle, and different methods are necessary to produce quick and accurate results. If quality code indicators could be produced on a per-project basis, then IV&V could proceed in a more straight-forward fashion, saving time and money. This article presents one case study on just such a project, showing that by using the proper metrics and machine learning algorithms, quality indicators can be found as early as 3 months into the IV&V process.
Citation:
Tim Menzies, Justin S. Di Stefano, Mike Chapman, "Learning Early Lifecycle IV&V Quality Indicators," metrics, pp.88, Ninth International Software Metrics Symposium (METRICS'03), 2003
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