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Main Authors: Rochkoulets, Maxime, Vrček, Lovro, Šikić, Mile
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2604.04287
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author Rochkoulets, Maxime
Vrček, Lovro
Šikić, Mile
author_facet Rochkoulets, Maxime
Vrček, Lovro
Šikić, Mile
contents Foundation models in genomics have shown mixed success compared to their counterparts in natural language processing. Yet, the reasons for their limited effectiveness remain poorly understood. In this work, we investigate the role of entropy as a fundamental factor limiting the capacities of such models to learn from their training data and develop foundational capabilities. We train ensembles of models on text and DNA sequences and analyze their predictions, static embeddings, and empirical Fisher information flow. We show that the high entropy of genomic sequences -- from the point of view of unseen token prediction -- leads to near-uniform output distributions, disagreement across models, and unstable static embeddings, even for models that are matched in architecture, training and data. We then demonstrate that models trained on DNA concentrate Fisher information in embedding layers, seemingly failing to exploit inter-token relationships. Our results suggest that self-supervised training from sequences alone may not be applicable to genomic data, calling into question the assumptions underlying current methodologies for training genomic foundation models.
format Preprint
id arxiv_https___arxiv_org_abs_2604_04287
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Entropy, Disagreement, and the Limits of Foundation Models in Genomics
Rochkoulets, Maxime
Vrček, Lovro
Šikić, Mile
Machine Learning
Computation and Language
Genomics
Foundation models in genomics have shown mixed success compared to their counterparts in natural language processing. Yet, the reasons for their limited effectiveness remain poorly understood. In this work, we investigate the role of entropy as a fundamental factor limiting the capacities of such models to learn from their training data and develop foundational capabilities. We train ensembles of models on text and DNA sequences and analyze their predictions, static embeddings, and empirical Fisher information flow. We show that the high entropy of genomic sequences -- from the point of view of unseen token prediction -- leads to near-uniform output distributions, disagreement across models, and unstable static embeddings, even for models that are matched in architecture, training and data. We then demonstrate that models trained on DNA concentrate Fisher information in embedding layers, seemingly failing to exploit inter-token relationships. Our results suggest that self-supervised training from sequences alone may not be applicable to genomic data, calling into question the assumptions underlying current methodologies for training genomic foundation models.
title Entropy, Disagreement, and the Limits of Foundation Models in Genomics
topic Machine Learning
Computation and Language
Genomics
url https://arxiv.org/abs/2604.04287