Litcius/Paper detail

Spectral Map: Embedding Slow Kinetics in Collective Variables

Jakub Rydzewski

2023The Journal of Physical Chemistry Letters19 citationsDOIOpen Access PDF

Abstract

The dynamics of physical systems that require high-dimensional representation can often be captured in a few meaningful degrees of freedom called collective variables (CVs). However, identifying CVs is challenging and constitutes a fundamental problem in physical chemistry. This problem is even more pronounced when CVs need to provide information about slow kinetics related to rare transitions between long-lived metastable states. To address this issue, we propose an unsupervised deep-learning method called spectral map. Our method constructs slow CVs by maximizing the spectral gap between slow and fast eigenvalues of a transition matrix estimated by an anisotropic diffusion kernel. We demonstrate our method in several high-dimensional reversible folding processes.

Topics & Concepts

MetastabilityStatistical physicsKineticsEmbeddingDegrees of freedom (physics and chemistry)Representation (politics)Folding (DSP implementation)Computer scienceKernel (algebra)Eigenvalues and eigenvectorsPhysicsMathematicsArtificial intelligenceThermodynamicsClassical mechanicsCombinatoricsQuantum mechanicsPoliticsLawElectrical engineeringPolitical scienceEngineeringQuantum many-body systemsNeural dynamics and brain functionSpectroscopy and Quantum Chemical Studies
Spectral Map: Embedding Slow Kinetics in Collective Variables | Litcius