DocumentCode
2497006
Title
AI tools for software development effort estimation
Author
Finnie, Gavin R. ; Wittig, Gerhard E.
Author_Institution
Bond Univ., Gold Coast, Qld., Australia
fYear
1996
fDate
24-27 Jan 1996
Firstpage
346
Lastpage
353
Abstract
Software development involves a number of interrelated factors which affect development effort and productivity. Since many of these relationships are not well understood, accurate estimation of software development time and effort is a difficult problem. Most estimation models in use or proposed in the literature are based on regression techniques. This paper examines the potential of two artificial intelligence approaches, viz. artificial neural networks and case-based reasoning, for creating development effort estimation models. Artificial neural networks can provide accurate estimates when there are complex relationships between variables and where the input data is distorted by high noise levels. Case-based reasoning solves problems by adapting solutions from old problems that are similar to the current problem. This research examines both the performance of backpropagation artificial neural networks in estimating software development effort and the potential of case-based reasoning for development estimation using the same dataset
Keywords
artificial intelligence; backpropagation; case-based reasoning; computer aided software engineering; human resource management; neural nets; software cost estimation; software tools; artificial intelligence; backpropagation artificial neural networks; case-based reasoning; complex variable relationships; function points; noisy input data; productivity; software development effort estimation; software development time; Artificial intelligence; Artificial neural networks; Australia; Bonding; Gold; Intelligent networks; Noise level; Predictive models; Productivity; Programming;
fLanguage
English
Publisher
ieee
Conference_Titel
Software Engineering: Education and Practice, 1996. Proceedings. International Conference
Conference_Location
Dunedin
Print_ISBN
0-8186-7379-6
Type
conf
DOI
10.1109/SEEP.1996.534020
Filename
534020
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