Data-driven assessment of optimal spatiotemporal resolutions for information extraction in noisy time series data
Domiziano Doria, Simone Martino, Matteo Becchi, Giovanni M. Pavan

TL;DR
This paper introduces an unsupervised data-driven method to identify the optimal spatiotemporal resolutions for analyzing complex systems, enhancing information extraction by focusing on characteristic length scales of key processes.
Contribution
The novel approach automatically determines the best space and time resolutions for studying complex systems directly from data, applicable across various scales and dynamic complexities.
Findings
Method successfully identifies characteristic length scales in diverse systems.
Optimal resolutions improve data classification and analysis.
Applicable to static and dynamic data types.
Abstract
In general, comprehension of any type of complex system depends on the resolution used to examine the phenomena occurring within it. However, identifying a priori, for example, the best time frequencies/scales to study a certain system over-time, or the spatial distances at which correlations, symmetries, and fluctuations are, most often non-trivial. Here we describe an unsupervised approach that, starting solely from the data of a system, allows learning the characteristic length scales of the dominant key events/processes and the optimal spatiotemporal resolutions to characterize them. We tested this approach on time series data obtained from simulation or experimental trajectories of various example many-body complex systems ranging from the atomic to the macroscopic scale and having diverse internal dynamic complexities. Our method automatically analyzes the system data by analyzing…
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Taxonomy
TopicsConstraint Satisfaction and Optimization
