Bayesian Uncertainty Quantification for Functional Response
This chapter addresses the stochastic modeling of functional response, which is a major concern in engineering implementation. We first introduce a general framework and several conventional models for functional data, including the functional linear model, penalized regression splines, and the spat...
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Main Authors: | Guo, Xiao (Author), He, Yang (Author), Zhu, Binbin (Author), Yang, Yang (Author), Deng, Ke (Author), Liu, Ruopeng (Author), Ji, Chunlin (Author) |
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Format: | Ebooks |
Published: |
IntechOpen,
2017-07-05.
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Online Access: | Get Online |
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