Lessons Learned and Results from Applying Data-Driven Cost Estimation to Industrial Data Sets
J Heidrich, A Trendowicz, J Munch… - … Conference on the …, 2007 - ieeexplore.ieee.org
J Heidrich, A Trendowicz, J Munch, Y Ishigai, K Yokoyama, N Kikuchi, T Kawaguchi
6th International Conference on the Quality of Information and …, 2007•ieeexplore.ieee.orgThe increasing availability of cost-relevant data in industry allows companies to apply data-
intensive estimation methods. However, available data are often inconsistent, invalid, or
incomplete, so that most of the existing data-intensive estimation methods cannot be
applied. Only few estimation methods can deal with imperfect data to a certain extent (eg,
optimized set reduction, OSR). Results from evaluating these methods in practical
environments are rare. This article describes a case study on the application of OSR at …
intensive estimation methods. However, available data are often inconsistent, invalid, or
incomplete, so that most of the existing data-intensive estimation methods cannot be
applied. Only few estimation methods can deal with imperfect data to a certain extent (eg,
optimized set reduction, OSR). Results from evaluating these methods in practical
environments are rare. This article describes a case study on the application of OSR at …
The increasing availability of cost-relevant data in industry allows companies to apply data-intensive estimation methods. However, available data are often inconsistent, invalid, or incomplete, so that most of the existing data-intensive estimation methods cannot be applied. Only few estimation methods can deal with imperfect data to a certain extent (e.g., optimized set reduction, OSR). Results from evaluating these methods in practical environments are rare. This article describes a case study on the application of OSR at Toshiba information systems (Japan) corporation. An important result of the case study is that estimation accuracy significantly varies with the data sets used and the way of preprocessing these data. The study supports current results in the area of quantitative cost estimation and clearly illustrates typical problems. Experiences, lessons learned, and recommendations with respect to data preprocessing and data-intensive cost estimation in general are presented.
ieeexplore.ieee.org
Showing the best result for this search. See all results