Topological Signal Processing using the Weighted Ordinal Partition Network
Audun Myers, Firas A. Khasawneh, Elizabeth Munch

TL;DR
This paper introduces a topological signal processing framework using weighted ordinal partition networks to analyze time series, enhancing change point detection accuracy and noise resilience by incorporating additional weighting information into topological analysis.
Contribution
It extends previous work by integrating weights into the ordinal partition network analysis within TDA, improving robustness and dynamic state detection in time series.
Findings
Weighted OPN analysis improves noise robustness
Enhanced accuracy in change point detection
Framework outperforms traditional TDA methods
Abstract
One of the most important problems arising in time series analysis is that of bifurcation, or change point detection. That is, given a collection of time series over a varying parameter, when has the structure of the underlying dynamical system changed? For this task, we turn to the field of topological data analysis (TDA), which encodes information about the shape and structure of data. The idea of utilizing tools from TDA for signal processing tasks, known as topological signal processing (TSP), has gained much attention in recent years, largely through a standard pipeline that computes the persistent homology of the point cloud generated by the Takens' embedding. However, this procedure is limited by computation time since the simplicial complex generated in this case is large, but also has a great deal of redundant data. For this reason, we turn to a more recent method for encoding…
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Taxonomy
TopicsTopological and Geometric Data Analysis
