LGCGATSTMLOct 7, 2020

Capturing Dynamics of Time-Varying Data via Topology

arXiv:2010.05780v238 citations
Originality Synthesis-oriented
AI Analysis

This work provides an incremental update for applied mathematicians and researchers in topological data analysis by consolidating existing methods and introducing a new tool for dynamic data.

The paper tackles the problem of summarizing complex time-varying data, such as moving animal groups, by introducing a new topological visualization tool called crocker stacks, which are shown to be useful for parameter identification in a biological aggregation model.

One approach to understanding complex data is to study its shape through the lens of algebraic topology. While the early development of topological data analysis focused primarily on static data, in recent years, theoretical and applied studies have turned to data that varies in time. A time-varying collection of metric spaces as formed, for example, by a moving school of fish or flock of birds, can contain a vast amount of information. There is often a need to simplify or summarize the dynamic behavior. We provide an introduction to topological summaries of time-varying metric spaces including vineyards [19], crocker plots [56], and multiparameter rank functions [37]. We then introduce a new tool to summarize time-varying metric spaces: a crocker stack. Crocker stacks are convenient for visualization, amenable to machine learning, and satisfy a desirable continuity property which we prove. We demonstrate the utility of crocker stacks for a parameter identification task involving an influential model of biological aggregations [58]. Altogether, we aim to bring the broader applied mathematics community up-to-date on topological summaries of time-varying metric spaces.

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