Computing committors in collective variables via Mahalanobis diffusion maps

08/20/2021
by   Luke Evans, et al.
0

The study of rare events in molecular and atomic systems such as conformal changes and cluster rearrangements has been one of the most important research themes in chemical physics. Key challenges are associated with long waiting times rendering molecular simulations inefficient, high dimensionality impeding the use of PDE-based approaches, and the complexity or breadth of transition processes limiting the predictive power of asymptotic methods. Diffusion maps are promising algorithms to avoid or mitigate all these issues. We adapt the diffusion map with Mahalanobis kernel proposed by Singer and Coifman (2008) for the SDE describing molecular dynamics in collective variables in which the diffusion matrix is position-dependent and, unlike the case considered by Singer and Coifman, is not associated with a diffeomorphism. We offer an elementary proof showing that one can approximate the generator for this SDE discretized to a point cloud via the Mahalanobis diffusion map. We use it to calculate the committor functions in collective variables for two benchmark systems: alanine dipeptide, and Lennard-Jones-7 in 2D. For validating our committor results, we compare our committor functions to the finite-difference solution or by conducting a "committor analysis" as used by molecular dynamics practitioners. We contrast the outputs of the Mahalanobis diffusion map with those of the standard diffusion map with isotropic kernel and show that the former gives significantly more accurate estimates for the committors than the latter.

READ FULL TEXT

page 13

page 16

research
08/27/2022

Computing committors via Mahalanobis diffusion maps with enhanced sampling data

The study of phenomena such as protein folding and conformational change...
research
07/01/2023

Understanding recent deep-learning techniques for identifying collective variables of molecular dynamics

The dynamics of a high-dimensional metastable molecular system can often...
research
12/06/2021

Collective variable discovery in the age of machine learning: reality, hype and everything in between

Understanding kinetics and thermodynamics profile of biomolecules is nec...
research
04/01/2023

Diffusion map particle systems for generative modeling

We propose a novel diffusion map particle system (DMPS) for generative m...
research
06/26/2023

Elucidating Interfacial Dynamics of Ti-Al Systems Using Molecular Dynamics Simulation and Markov State Modeling

Due to their remarkable mechanical and chemical properties, Ti-Al based ...
research
10/04/2022

DiffDock: Diffusion Steps, Twists, and Turns for Molecular Docking

Predicting the binding structure of a small molecule ligand to a protein...
research
02/28/2018

Automated design of collective variables using supervised machine learning

Selection of appropriate collective variables for enhancing sampling of ...

Please sign up or login with your details

Forgot password? Click here to reset