Title :
Finding the right data for software cost modeling
Author :
Chen, Zhihao ; Menzies, Tim ; Port, Daniel ; Boehm, Barry
Author_Institution :
Center for Software Eng., Univ. of Southern California, Los Angeles, CA, USA
Abstract :
Good software cost models can significantly help software project managers. With good models, project stakeholders can make informed decisions about how to manage resources, how to control and plan the project, or how to deliver the project on time, on schedule, and on budget. Real-world data sets, such as those coming from software engineering projects, often contain noisy, irrelevant, or redundant variables. We propose that cost modelers should perform data-pruning experiments after data collection and before model building. Such pruning experiments are simple and fast.
Keywords :
project management; software cost estimation; software management; data collection; data-pruning method; real-world data set; resource management; software cost model; software engineering; software project management; Costs; Databases; Financial management; Predictive models; Project management; Radio access networks; Remote monitoring; Resource management; Scheduling; State estimation; COCOMO; cost modeling; feature subset selection; software engineering; time estimation; wrapper;
Journal_Title :
Software, IEEE
DOI :
10.1109/MS.2005.151