Rare event sampling with stochastic growth algorithms
Statistical Mechanics
2015-06-11 v1
Abstract
We discuss uniform sampling algorithms that are based on stochastic growth methods, using sampling of extreme configurations of polymers in simple lattice models as a motivation. We shall show how a series of clever enhancements to a fifty-odd year old algorithm, the Rosenbluth method, led to a cutting-edge algorithm capable of uniform sampling of equilibrium statistical mechanical systems of polymers in situations where competing algorithms failed to perform well. Examples range from collapsed homo-polymers near sticky surfaces to models of protein folding.
Cite
@article{arxiv.1209.2186,
title = {Rare event sampling with stochastic growth algorithms},
author = {T. Prellberg},
journal= {arXiv preprint arXiv:1209.2186},
year = {2015}
}
Comments
First International Conference on Numerical Physics