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Bayesian linear regression model for curve fitting
This article describes a Bayesian-based method for solving curve fitting problems. We extend the basic linear regression model by adding an extra linear term and incorporating the Bayesian learning. The additional linear term offsets the localized behavior induced by basis functions, while the Bayesian approach effectively reduces overfitting. Difficult benchmark dataset from NIST and high-energy physics experiments have been tested with satisfactory results. It is intriguing to notice that curve fitting, a type of traditional numerical analysis problem, can be treated as an adaptive computational problem under the Bayesian probabilistic framework. © IFIP International Federation for Information Processing 2018.
History
Editor
Shi Z; Li J; Mercier-Laurent EParent Title
Intelligent Information Processing IX: 10th IFIP TC 12 International Conference, IIP 2018 Nanning, China, October 19–22, 2018 ProceedingsVolume
538Start Page
363End Page
372Number of Pages
10Start Date
2018-10-19Finish Date
2018-10-22eISSN
1868-422XISSN
1868-4238ISBN-13
9783030008277Location
Nanning, ChinaPublisher
SpringerPlace of Publication
Cham, SwitzerlandPublisher DOI
Peer Reviewed
- Yes
Open Access
- No
Era Eligible
- Yes
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10th IFIP TC 12 International Conference IIP 2018Usage metrics
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