Litcius/Paper detail

Operationally meaningful representations of physical systems in neural networks

Hendrik Poulsen Nautrup, Tony Metger, Raban Iten, Sofiène Jerbi, Lea M. Trenkwalder, Henrik Wilming, Hans J. Briegel, Renato Renner

2022Machine Learning Science and Technology24 citationsDOIOpen Access PDF

Abstract

Abstract To make progress in science, we often build abstract representations of physical systems that meaningfully encode information about the systems. Such representations ignore redundant features and treat parameters such as velocity and position separately because they can be useful for making statements about different experimental settings. Here, we capture this notion by formally defining the concept of operationally meaningful representations. We present an autoencoder architecture with attention mechanism that can generate such representations and demonstrate it on examples involving both classical and quantum physics. For instance, our architecture finds a compact representation of an arbitrary two-qubit system that separates local parameters from parameters describing quantum correlations.

Topics & Concepts

ENCODERepresentation (politics)Computer sciencePhysical systemReinforcement learningArtificial neural networkArtificial intelligenceArchitectureTheoretical computer scienceQubitMachine learningQuantumHuman–computer interactionBiochemistryQuantum mechanicsPolitical scienceChemistryPhysicsArtLawGenePoliticsVisual artsNeural Networks and Reservoir ComputingQuantum many-body systemsNeural Networks and Applications