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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
Tim Menzies, West Virginia University
Justin S. Di Stefano, West Virginia University
Mike Chapman, West Virginia University
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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