학술논문

Analyzing Multimodal Probability Measures with Autoencoders
Document Type
Article
Source
The Journal of Physical Chemistry - Part B; March 2024, Vol. 128 Issue: 11 p2607-2631, 25p
Subject
Language
ISSN
15206106; 15205207
Abstract
Finding collective variables to describe some important coarse-grained information on physical systems, in particular metastable states, remains a key issue in molecular dynamics. Recently, machine learning techniques have been intensively used to complement and possibly bypass expert knowledge in order to construct collective variables. Our focus here is on neural network approaches based on autoencoders. We study some relevant mathematical properties of the loss function considered for training autoencoders and provide physical interpretations based on conditional variances and minimum energy paths. We also consider various extensions in order to better describe physical systems, by incorporating more information on transition states at saddle points, and/or allowing for multiple decoders in order to describe several transition paths. Our results are illustrated on toy two-dimensional systems and on alanine dipeptide.