Detecting and Mitigating Mode-Collapse for Flow-based Sampling of
Lattice Field Theories
- URL: http://arxiv.org/abs/2302.14082v2
- Date: Fri, 3 Nov 2023 07:19:53 GMT
- Title: Detecting and Mitigating Mode-Collapse for Flow-based Sampling of
Lattice Field Theories
- Authors: Kim A. Nicoli and Christopher J. Anders and Tobias Hartung and Karl
Jansen and Pan Kessel and Shinichi Nakajima
- Abstract summary: We study the consequences of mode-collapse of normalizing flows in the context of lattice field theory.
We propose a metric to quantify the degree of mode-collapse and derive a bound on the resulting bias.
- Score: 6.222204646855336
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: We study the consequences of mode-collapse of normalizing flows in the
context of lattice field theory. Normalizing flows allow for independent
sampling. For this reason, it is hoped that they can avoid the tunneling
problem of local-update MCMC algorithms for multi-modal distributions. In this
work, we first point out that the tunneling problem is also present for
normalizing flows but is shifted from the sampling to the training phase of the
algorithm. Specifically, normalizing flows often suffer from mode-collapse for
which the training process assigns vanishingly low probability mass to relevant
modes of the physical distribution. This may result in a significant bias when
the flow is used as a sampler in a Markov-Chain or with Importance Sampling. We
propose a metric to quantify the degree of mode-collapse and derive a bound on
the resulting bias. Furthermore, we propose various mitigation strategies in
particular in the context of estimating thermodynamic observables, such as the
free energy.
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