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Weighted ensemble: Recent mathematical developments

David Aristoff, Jeremy Copperman, Gideon Simpson, Robert J. Webber, Daniel M. Zuckerman

2022The Journal of Chemical Physics22 citationsDOIOpen Access PDF

Abstract

Weighted ensemble (WE) is an enhanced sampling method based on periodically replicating and pruning trajectories generated in parallel. WE has grown increasingly popular for computational biochemistry problems due, in part, to improved hardware and accessible software implementations. Algorithmic and analytical improvements have played an important role, and progress has accelerated in recent years. Here, we discuss and elaborate on the WE method from a mathematical perspective, highlighting recent results that enhance the computational efficiency. The mathematical theory reveals a new strategy for optimizing trajectory management that approaches the best possible variance while generalizing to systems of arbitrary dimension.

Topics & Concepts

Computer sciencePruningImplementationDimension (graph theory)Variance (accounting)Perspective (graphical)Theoretical computer scienceTrajectoryAlgorithmMathematical optimizationArtificial intelligenceMathematicsSoftware engineeringAstronomyPure mathematicsPhysicsAgronomyBiologyAccountingBusinessGene Regulatory Network AnalysisGene expression and cancer classificationEvolution and Genetic Dynamics
Weighted ensemble: Recent mathematical developments | Litcius