Joint Learning of Model Parameters and Coefficients for Online Nonlinear Estimation
We propose a novel online algorithm for efficient nonlinear estimation. Target nonlinear functions are approximated with “unfixed”Gaussians of which the parameters are regarded as (a part of) variables. The Gaussian parameters (scales and centers), as well as the coefficients,...
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doaj-45ff30ffe6e640b8b9642cfcb60ca9ce2021-03-30T15:06:42ZengIEEEIEEE Access2169-35362021-01-019240262404010.1109/ACCESS.2021.30536519333579Joint Learning of Model Parameters and Coefficients for Online Nonlinear EstimationMasa-Aki Takizawa0https://orcid.org/0000-0002-5295-9278Masahiro Yukawa1https://orcid.org/0000-0002-3709-275XDepartment of Electronics and Electrical Engineering, Keio University, Kanagawa, JapanDepartment of Electronics and Electrical Engineering, Keio University, Kanagawa, JapanWe propose a novel online algorithm for efficient nonlinear estimation. Target nonlinear functions are approximated with “unfixed”Gaussians of which the parameters are regarded as (a part of) variables. The Gaussian parameters (scales and centers), as well as the coefficients, are updated to suppress the instantaneous squared errors regularized by the ℓ<sub>1</sub> norm of the coefficients to enhance the model efficiency. Another point for enhancing the model efficiency is the multiscale screening method, which is a hierarchical dictionary growing scheme to initialize Gaussian scales with multiple choices. To reduce the computational complexity, a certain selection strategy is presented for growing the dictionary and updating the Gaussian parameters. Computer experiments show that the proposed algorithm enjoys high adaptation-capability and produces efficient estimates.https://ieeexplore.ieee.org/document/9333579/Nonlinear estimationonline learningmodel parameter tuningGaussian functionsparse regularization |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Masa-Aki Takizawa Masahiro Yukawa |
spellingShingle |
Masa-Aki Takizawa Masahiro Yukawa Joint Learning of Model Parameters and Coefficients for Online Nonlinear Estimation IEEE Access Nonlinear estimation online learning model parameter tuning Gaussian function sparse regularization |
author_facet |
Masa-Aki Takizawa Masahiro Yukawa |
author_sort |
Masa-Aki Takizawa |
title |
Joint Learning of Model Parameters and Coefficients for Online Nonlinear Estimation |
title_short |
Joint Learning of Model Parameters and Coefficients for Online Nonlinear Estimation |
title_full |
Joint Learning of Model Parameters and Coefficients for Online Nonlinear Estimation |
title_fullStr |
Joint Learning of Model Parameters and Coefficients for Online Nonlinear Estimation |
title_full_unstemmed |
Joint Learning of Model Parameters and Coefficients for Online Nonlinear Estimation |
title_sort |
joint learning of model parameters and coefficients for online nonlinear estimation |
publisher |
IEEE |
series |
IEEE Access |
issn |
2169-3536 |
publishDate |
2021-01-01 |
description |
We propose a novel online algorithm for efficient nonlinear estimation. Target nonlinear functions are approximated with “unfixed”Gaussians of which the parameters are regarded as (a part of) variables. The Gaussian parameters (scales and centers), as well as the coefficients, are updated to suppress the instantaneous squared errors regularized by the ℓ<sub>1</sub> norm of the coefficients to enhance the model efficiency. Another point for enhancing the model efficiency is the multiscale screening method, which is a hierarchical dictionary growing scheme to initialize Gaussian scales with multiple choices. To reduce the computational complexity, a certain selection strategy is presented for growing the dictionary and updating the Gaussian parameters. Computer experiments show that the proposed algorithm enjoys high adaptation-capability and produces efficient estimates. |
topic |
Nonlinear estimation online learning model parameter tuning Gaussian function sparse regularization |
url |
https://ieeexplore.ieee.org/document/9333579/ |
work_keys_str_mv |
AT masaakitakizawa jointlearningofmodelparametersandcoefficientsforonlinenonlinearestimation AT masahiroyukawa jointlearningofmodelparametersandcoefficientsforonlinenonlinearestimation |
_version_ |
1724179973417205760 |