While there exists extensive literature on software cost estimation techniques, industry practice continues to rely upon standard regression-based algorithms. These software effort models are typically calibrated or tuned to local conditions using local data. This paper cautions that current approaches to model calibration often produce sub-optimal models because of the large variance problem inherent in cost data and by including far more effort multipliers than the data supports. Building optimal models requires that a wider range of models be considered while correctly calibrating these models requires rejection rules that prune variables and records and use multiple criteria for evaluating model performance. The main contribution of thi...
Context: It is unclear that current approaches to evaluating or comparing competing software cost or...
For large projects, automated estimates are more successful than manual estimates in terms of accura...
During the past 10 years, the amount of effort put on setting up benchmarking repositories has consi...
One of the problems in software cost estimation is how to evaluate estimation models. Estimation mod...
The accurate prediction of software development costs may have a large economic impact. As a conseq...
Confidence in cost estimation is different than model accuracy. It is related to the significance of...
In this paper we investigate the accuracy of cost estimates when using different modeling techniques...
Many software companies track and analyze project performance by measuring cost estimation accuracy....
Accurate estimation is the foundation of effective project planning, tracking and controlling. Model...
This paper investigates two essential questions related to data-driven, software cost modeling: (1) ...
Software spending is increasing within the DoD, NASA, and other technologically advanced organizatio...
Project managers and software engineers are responsible for providing reasonable estimates of the pr...
Estimating the cost, effort, and size to complete a software project is one of the most difficult an...
UnrestrictedAccurately estimating the cost of software projects is one of the most desired capabilit...
Abstract — Software cost estimation (SCE) is a vigorous research area in the software engineering co...
Context: It is unclear that current approaches to evaluating or comparing competing software cost or...
For large projects, automated estimates are more successful than manual estimates in terms of accura...
During the past 10 years, the amount of effort put on setting up benchmarking repositories has consi...
One of the problems in software cost estimation is how to evaluate estimation models. Estimation mod...
The accurate prediction of software development costs may have a large economic impact. As a conseq...
Confidence in cost estimation is different than model accuracy. It is related to the significance of...
In this paper we investigate the accuracy of cost estimates when using different modeling techniques...
Many software companies track and analyze project performance by measuring cost estimation accuracy....
Accurate estimation is the foundation of effective project planning, tracking and controlling. Model...
This paper investigates two essential questions related to data-driven, software cost modeling: (1) ...
Software spending is increasing within the DoD, NASA, and other technologically advanced organizatio...
Project managers and software engineers are responsible for providing reasonable estimates of the pr...
Estimating the cost, effort, and size to complete a software project is one of the most difficult an...
UnrestrictedAccurately estimating the cost of software projects is one of the most desired capabilit...
Abstract — Software cost estimation (SCE) is a vigorous research area in the software engineering co...
Context: It is unclear that current approaches to evaluating or comparing competing software cost or...
For large projects, automated estimates are more successful than manual estimates in terms of accura...
During the past 10 years, the amount of effort put on setting up benchmarking repositories has consi...