Title :
Experience with the accuracy of software maintenance task effort prediction models
Author :
Jorgensen, Magne
Author_Institution :
Oslo Univ.
fDate :
8/1/1995 12:00:00 AM
Abstract :
The paper reports experience from the development and use of eleven different software maintenance effort prediction models. The models were developed applying regression analysis, neural networks and pattern recognition and the prediction accuracy was measured and compared for each model type. The most accurate predictions were achieved applying models based on multiple regression and on pattern recognition. We suggest the use of prediction models as instruments to support the expert estimates and to analyse the impact of the maintenance variables on the maintenance process and product. We believe that the pattern recognition based models evaluated, i.e., the prediction models based on the Optimized Set Reduction method, show potential for such use
Keywords :
neural nets; pattern recognition; software maintenance; statistical analysis; Optimized Set Reduction method; expert estimates; maintenance process; maintenance variables; model type; multiple regression; neural networks; pattern recognition; pattern recognition based models; prediction accuracy; prediction models; regression analysis; software maintenance task effort prediction models; Application software; Instruments; Neural networks; Optimization methods; Pattern recognition; Predictive models; Programming; Regression analysis; Software maintenance; Software measurement;
Journal_Title :
Software Engineering, IEEE Transactions on