Package AdvEMDpy : algorithmic variations of empirical mode decomposition in Python
| Year of publication: |
2023
|
|---|---|
| Authors: | Jaarsveldt, Cole van ; Ames, Matthew ; Peters, Gareth ; Chantler, Mike |
| Published in: |
Annals of actuarial science. - Cambridge : Cambridge University Press, ISSN 1748-5002, ZDB-ID 2418917-0. - Vol. 17.2023, 3, p. 606-642
|
| Subject: | Downsampling | Empirical Mode Decomposition (EMD) | Enhanced EMD (EEMD) | Ensemble EMD | Filtering | Graduation | Hilbert transform | Knot optimisation | MATLAB | Python | R | Splines | Statistical EMD (SEMD) | Time series analysis | Winsorization | Zeitreihenanalyse | Dekompositionsverfahren | Decomposition method |
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