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Auteurs principaux: Galperin, Daniel, Köthe, Ullrich
Format: Preprint
Publié: 2024
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Accès en ligne:https://arxiv.org/abs/2410.19426
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author Galperin, Daniel
Köthe, Ullrich
author_facet Galperin, Daniel
Köthe, Ullrich
contents Good generative models should not only synthesize high quality data, but also utilize interpretable representations that aid human understanding of their behavior. However, it is difficult to measure objectively if and to what degree desirable properties of disentangled representations have been achieved. Inspired by the principle of independent mechanisms, we address this difficulty by introducing a novel set of tractable information-theoretic evaluation metrics. We demonstrate the usefulness of our metrics on illustrative toy examples and conduct an in-depth comparison of various normalizing flow architectures and $β$-VAEs on the EMNIST dataset. Our method allows to sort latent features by importance and assess the amount of residual correlations of the resulting concepts. The most interesting finding of our experiments is a ranking of model architectures and training procedures in terms of their inductive bias to converge to aligned and disentangled representations during training.
format Preprint
id arxiv_https___arxiv_org_abs_2410_19426
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Analyzing Generative Models by Manifold Entropic Metrics
Galperin, Daniel
Köthe, Ullrich
Machine Learning
Good generative models should not only synthesize high quality data, but also utilize interpretable representations that aid human understanding of their behavior. However, it is difficult to measure objectively if and to what degree desirable properties of disentangled representations have been achieved. Inspired by the principle of independent mechanisms, we address this difficulty by introducing a novel set of tractable information-theoretic evaluation metrics. We demonstrate the usefulness of our metrics on illustrative toy examples and conduct an in-depth comparison of various normalizing flow architectures and $β$-VAEs on the EMNIST dataset. Our method allows to sort latent features by importance and assess the amount of residual correlations of the resulting concepts. The most interesting finding of our experiments is a ranking of model architectures and training procedures in terms of their inductive bias to converge to aligned and disentangled representations during training.
title Analyzing Generative Models by Manifold Entropic Metrics
topic Machine Learning
url https://arxiv.org/abs/2410.19426