Using scaling-region distributions to select embedding parameters
Varad Deshmukh, Robert Meikle, Elizabeth Bradley, James D. Meiss,, Joshua Garland

TL;DR
This paper introduces an automated, statistically rigorous method for selecting embedding parameters in delay reconstruction, reducing subjectivity and improving confidence in the results.
Contribution
It proposes a new approach that automates scaling-region detection and provides confidence intervals, enhancing the reliability of embedding parameter selection.
Findings
Automated method successfully selects embedding dimension in real and simulated systems.
Results align with traditional heuristics like FNN and correlation dimension.
Method extends to other delay reconstruction parameters.
Abstract
Reconstructing state-space dynamics from scalar data using time-delay embedding requires choosing values for the delay and the dimension . Both parameters are critical to the success of the procedure and neither is easy to formally validate. While embedding theorems do offer formal guidance for these choices, in practice one has to resort to heuristics, such as the average mutual information (AMI) method of Fraser & Swinney for or the false near neighbor (FNN) method of Kennel et al. for . Best practice suggests an iterative approach: one of these heuristics is used to make a good first guess for the corresponding free parameter and then an "asymptotic invariant" approach is then used to firm up its value by, e.g., computing the correlation dimension or Lyapunov exponent for a range of values and looking for convergence. This process can be subjective, as these…
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Taxonomy
TopicsUnderwater Acoustics Research
