TL;DR
This paper introduces a delay-variant embedding method for topological analysis of time-series data, capturing multi-scale patterns and improving classification accuracy over traditional single-delay approaches.
Contribution
The novel delay-variant embedding considers multiple time delays simultaneously, enhancing topological feature extraction and robustness for time-series classification.
Findings
Outperforms single delay methods in classification accuracy
Effectively captures multi-scale time-series patterns
Proven robustness of features under noisy conditions
Abstract
Identifying the qualitative changes in time-series data provides insights into the dynamics associated with such data. Such qualitative changes can be detected through topological approaches, which first embed the data into a high-dimensional space using a time-delay parameter and subsequently extract topological features describing the shape of the data from the embedded points. However, the essential topological features that are extracted using a single time delay are considered to be insufficient for evaluating the aforementioned qualitative changes, even when a well-selected time delay is used. We therefore propose a delay-variant embedding method that constructs the extended topological features by considering the time delay as a variable parameter instead of considering it as a single fixed value. This delay-variant embedding method reveals multiple-time-scale patterns in a time…
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