Saved in:
Bibliographic Details
Main Authors: Strano, Giorgio, Cerovaz, Luca, Mancusi, Michele, Mencattini, Tommaso, Rodolà, Emanuele
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2606.00635
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866910275972628480
author Strano, Giorgio
Cerovaz, Luca
Mancusi, Michele
Mencattini, Tommaso
Rodolà, Emanuele
author_facet Strano, Giorgio
Cerovaz, Luca
Mancusi, Michele
Mencattini, Tommaso
Rodolà, Emanuele
contents Modern VAEs are rarely trained with the pointwise likelihood implied by the standard $β$-VAE objective. In practice, pointwise reconstruction is often combined with perceptual and adversarial losses, despite a lack of understanding of how this changes the latent dynamics of the model. We show that the choice of reconstruction loss reshapes the rate-distortion problem itself, altering both the information content and the geometry of the learned latent space in ways that may be invisible from reconstructions alone. First, we prove and verify empirically that augmenting pointwise reconstruction with neural terms, such as perceptual and adversarial objectives, reduces the amount of information stored in the latent representations. Second, we show that neural reconstruction losses systematically change the geometry of the latent space: they make representations more isotropic and distribute uncertainty more evenly across latent dimensions, producing different posterior variance profiles. These findings highlight how the rate-distortion tradeoff is not a comprehensive lens to understand the behavior of VAEs, and we propose a more mechanistic approach to investigate how the choice of a distortion metric reshapes the optimization problem.
format Preprint
id arxiv_https___arxiv_org_abs_2606_00635
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle How Neural Losses Shape VAE Latents
Strano, Giorgio
Cerovaz, Luca
Mancusi, Michele
Mencattini, Tommaso
Rodolà, Emanuele
Machine Learning
Modern VAEs are rarely trained with the pointwise likelihood implied by the standard $β$-VAE objective. In practice, pointwise reconstruction is often combined with perceptual and adversarial losses, despite a lack of understanding of how this changes the latent dynamics of the model. We show that the choice of reconstruction loss reshapes the rate-distortion problem itself, altering both the information content and the geometry of the learned latent space in ways that may be invisible from reconstructions alone. First, we prove and verify empirically that augmenting pointwise reconstruction with neural terms, such as perceptual and adversarial objectives, reduces the amount of information stored in the latent representations. Second, we show that neural reconstruction losses systematically change the geometry of the latent space: they make representations more isotropic and distribute uncertainty more evenly across latent dimensions, producing different posterior variance profiles. These findings highlight how the rate-distortion tradeoff is not a comprehensive lens to understand the behavior of VAEs, and we propose a more mechanistic approach to investigate how the choice of a distortion metric reshapes the optimization problem.
title How Neural Losses Shape VAE Latents
topic Machine Learning
url https://arxiv.org/abs/2606.00635