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Empirical data modeling in software engineering using radial basis functions

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2 Author(s)
Miyoung Shin ; Electron. & Telecommun. Res. Inst., Taejon, South Korea ; A. L. Goel

Many empirical studies in software engineering involve relationships between various process and product characteristics derived via linear regression analysis. We propose an alternative modeling approach using radial basis functions (RBFs) which provide a flexible way to generalize linear regression function. Further, RBF models possess strong mathematical properties of universal and best approximation. We present an objective modeling methodology for determining model parameters using our recent SG algorithm, followed by a model selection procedure based on generalization ability. Finally, we describe a detailed RBF modeling study for software effort estimation using a well-known NASA dataset

Published in:

IEEE Transactions on Software Engineering  (Volume:26 ,  Issue: 6 )