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Main Authors: Souveton, Vincent, Guillin, Arnaud, Jasche, Jens, Lavaux, Guilhem, Michel, Manon
Format: Preprint
Published: 2023
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Online Access:https://arxiv.org/abs/2302.01955
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author Souveton, Vincent
Guillin, Arnaud
Jasche, Jens
Lavaux, Guilhem
Michel, Manon
author_facet Souveton, Vincent
Guillin, Arnaud
Jasche, Jens
Lavaux, Guilhem
Michel, Manon
contents Normalizing Flows (NF) are Generative models which transform a simple prior distribution into the desired target. They however require the design of an invertible mapping whose Jacobian determinant has to be computable. Recently introduced, Neural Hamiltonian Flows (NHF) are Hamiltonian dynamics-based flows, which are continuous, volume-preserving and invertible and thus make for natural candidates for robust NF architectures. In particular, their similarity to classical Mechanics could lead to easier interpretability of the learned mapping. In this paper, we show that the current NHF architecture may still pose a challenge to interpretability. Inspired by Physics, we introduce a fixed-kinetic energy version of the model. This approach improves interpretability and robustness while requiring fewer parameters than the original model. We illustrate that on a 2D Gaussian mixture and on the MNIST and Fashion-MNIST datasets. Finally, we show how to adapt NHF to the context of Bayesian inference and illustrate the method on an example from cosmology.
format Preprint
id arxiv_https___arxiv_org_abs_2302_01955
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Fixed-kinetic Neural Hamiltonian Flows for enhanced interpretability and reduced complexity
Souveton, Vincent
Guillin, Arnaud
Jasche, Jens
Lavaux, Guilhem
Michel, Manon
Machine Learning
Normalizing Flows (NF) are Generative models which transform a simple prior distribution into the desired target. They however require the design of an invertible mapping whose Jacobian determinant has to be computable. Recently introduced, Neural Hamiltonian Flows (NHF) are Hamiltonian dynamics-based flows, which are continuous, volume-preserving and invertible and thus make for natural candidates for robust NF architectures. In particular, their similarity to classical Mechanics could lead to easier interpretability of the learned mapping. In this paper, we show that the current NHF architecture may still pose a challenge to interpretability. Inspired by Physics, we introduce a fixed-kinetic energy version of the model. This approach improves interpretability and robustness while requiring fewer parameters than the original model. We illustrate that on a 2D Gaussian mixture and on the MNIST and Fashion-MNIST datasets. Finally, we show how to adapt NHF to the context of Bayesian inference and illustrate the method on an example from cosmology.
title Fixed-kinetic Neural Hamiltonian Flows for enhanced interpretability and reduced complexity
topic Machine Learning
url https://arxiv.org/abs/2302.01955