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Learning the effective order of a hypergraph dynamical system

Leonie Neuhäuser, Michael Scholkemper, Francesco Tudisco, Michael T. Schaub

2024Science Advances14 citationsDOIOpen Access PDF

Abstract

Dynamical systems on hypergraphs can display a rich set of behaviors not observable for systems with pairwise interactions. Given a distributed dynamical system with a putative hypergraph structure, an interesting question is thus how much of this hypergraph structure is actually necessary to faithfully replicate the observed dynamical behavior. To answer this question, we propose a method to determine the minimum order of a hypergraph necessary to approximate the corresponding dynamics accurately. Specifically, we develop a mathematical framework that allows us to determine this order when the type of dynamics is known. We use these ideas in conjunction with a hypergraph neural network to directly learn the dynamics itself and the resulting order of the hypergraph from both synthetic and real datasets consisting of observed system trajectories.

Topics & Concepts

HypergraphPairwise comparisonDynamical systems theorySet (abstract data type)Computer scienceOrder (exchange)Theoretical computer scienceObservableDynamical system (definition)AlgorithmMathematicsArtificial intelligenceDiscrete mathematicsPhysicsQuantum mechanicsEconomicsProgramming languageFinanceModel Reduction and Neural NetworksData Visualization and AnalyticsComputational Physics and Python Applications
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