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Data-driven model reduction and transfer operator approximation

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arxiv 1703.10112 v2 pith:HI5BRHVU submitted 2017-03-29 math.DS

Data-driven model reduction and transfer operator approximation

classification math.DS
keywords methodstransferdata-drivendevelopeddynamicaldynamicsoperatorreduction
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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In this review paper, we will present different data-driven dimension reduction techniques for dynamical systems that are based on transfer operator theory as well as methods to approximate transfer operators and their eigenvalues, eigenfunctions, and eigenmodes. The goal is to point out similarities and differences between methods developed independently by the dynamical systems, fluid dynamics, and molecular dynamics communities such as time-lagged independent component analysis (TICA), dynamic mode decomposition (DMD), and their respective generalizations. As a result, extensions and best practices developed for one particular method can be carried over to other related methods.

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