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Dynamical systems and complex networks: A Koopman operator perspective

14 May 2024
Stefan Klus
Natavsa Djurdjevac Conrad
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Abstract

The Koopman operator has entered and transformed many research areas over the last years. Although the underlying concept\unicodex2013\unicode{x2013}\unicodex2013representing highly nonlinear dynamical systems by infinite-dimensional linear operators\unicodex2013\unicode{x2013}\unicodex2013has been known for a long time, the availability of large data sets and efficient machine learning algorithms for estimating the Koopman operator from data make this framework extremely powerful and popular. Koopman operator theory allows us to gain insights into the characteristic global properties of a system without requiring detailed mathematical models. We will show how these methods can also be used to analyze complex networks and highlight relationships between Koopman operators and graph Laplacians.

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