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  4. Asymptotically unbiased estimation of physical observables with neural samplers
 
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2020
Journal Article
Title

Asymptotically unbiased estimation of physical observables with neural samplers

Abstract
We propose a general framework for the estimation of observables with generative neural samplers focusing on modern deep generative neural networks that provide an exact sampling probability. In this framework, we present asymptotically unbiased estimators for generic observables, including those that explicitly depend on the partition function such as free energy or entropy, and derive corresponding variance estimators. We demonstrate their practical applicability by numerical experiments for the two-dimensional Ising model which highlight the superiority over existing methods. Our approach greatly enhances the applicability of generative neural samplers to real-world physical systems.
Author(s)
Nicoli, K.A.
Nakajima, S.
Strodthoff, N.
Samek, W.
Müller, K.-R.
Kessel, P.
Journal
Physical Review. E  
Open Access
DOI
10.1103/PhysRevE.101.023304
Additional link
Full text
Language
English
Fraunhofer-Institut für Nachrichtentechnik, Heinrich-Hertz-Institut HHI  
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