Selecting embedding delays: An overview of embedding techniques and a new method using persistent homology

Author:

Tan Eugene1ORCID,Algar Shannon12ORCID,Corrêa Débora13ORCID,Small Michael134ORCID,Stemler Thomas1ORCID,Walker David1ORCID

Affiliation:

1. Complex Systems Group, Department of Mathematics and Statistics, The University of Western Australia 1 , Crawley, Western Australia 6009, Australia

2. Forrest Research Foundation, The University of Western Australia 2 , Crawley, Western Australia 6009, Australia

3. ARC Centre for Transforming Maintenance Through Data Science, The University of Western Australia 3 , Crawley, Western Australia 6009, Australia

4. Mineral Resources, CSIRO 4 , Kensington, Western Australia 6151, Australia

Abstract

Delay embedding methods are a staple tool in the field of time series analysis and prediction. However, the selection of embedding parameters can have a big impact on the resulting analysis. This has led to the creation of a large number of methods to optimize the selection of parameters such as embedding lag. This paper aims to provide a comprehensive overview of the fundamentals of embedding theory for readers who are new to the subject. We outline a collection of existing methods for selecting embedding lag in both uniform and non-uniform delay embedding cases. Highlighting the poor dynamical explainability of existing methods of selecting non-uniform lags, we provide an alternative method of selecting embedding lags that includes a mixture of both dynamical and topological arguments. The proposed method, Significant Times on Persistent Strands (SToPS), uses persistent homology to construct a characteristic time spectrum that quantifies the relative dynamical significance of each time lag. We test our method on periodic, chaotic, and fast-slow time series and find that our method performs similar to existing automated non-uniform embedding methods. Additionally, n-step predictors trained on embeddings constructed with SToPS were found to outperform other embedding methods when predicting fast-slow time series.

Funder

Australian Research Council Centre for Transforming Maintenance Through Data Science

Australian Research Council TSuNAMi

Forrest Research Foundation

Robert & Maude Gledden Foundation

A.F. Pillow Applied Mathematics Trust

Publisher

AIP Publishing

Subject

Applied Mathematics,General Physics and Astronomy,Mathematical Physics,Statistical and Nonlinear Physics

Reference95 articles.

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