4.7 Article

Predictive coarse-graining

Journal

JOURNAL OF COMPUTATIONAL PHYSICS
Volume 333, Issue -, Pages 49-77

Publisher

ACADEMIC PRESS INC ELSEVIER SCIENCE
DOI: 10.1016/j.jcp.2016.10.073

Keywords

Coarse-graining; Generative models; Bayesian; Uncertainty quantification; SPC/E water; Lattice systems

Funding

  1. Hans Fisher Senior Fellowship of Nicholas Zabaras of the Technical University of Munich-Institute for Advanced Study - German Excellence Initiative
  2. European Union Seventh Framework Programme [291763]
  3. Computer Science and Mathematics Division of ORNL under the DARPA EQUiPS program

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We propose a data-driven, coarse-graining formulation in the context of equilibrium statistical mechanics. In contrast to existing techniques which are based on a fine-to coarse map, we adopt the opposite strategy by prescribing a probabilistic coarse-to-fine map. This corresponds to a directed probabilistic model where the coarse variables play the role of latent generators of the fine scale (all-atom) data. From an information-theoretic perspective, the framework proposed provides an improvement upon the relative entropy method [1] and is capable of quantifying the uncertainty due to the information loss that unavoidably takes place during the coarse-graining process. Furthermore, it can be readily extended to a fully Bayesian model where various sources of uncertainties are reflected in the posterior of the model parameters. The latter can be used to produce not only point estimates of fine-scale reconstructions or macroscopic observables, but more importantly, predictive posterior distributions on these quantities. Predictive posterior distributions reflect the confidence of the model as a function of the amount of data and the level of coarse-graining. The issues of model complexity and model selection are seamlessly addressed by employing a hierarchical prior that favors the discovery of sparse solutions, revealing the most prominent features in the coarse-grained model. A flexible and parallelizable Monte Carlo - Expectation-Maximization (MC-EM) scheme is proposed for carrying out inference and learning tasks. A comparative assessment of the proposed methodology is presented for a lattice spin system and the SPCJE water model. (C) 2016 Elsevier Inc. All rights reserved.

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