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Main Authors: Alloula, Anissa, Jones, Charles, Wakefield-Skorniewska, Zuzanna, Quinzan, Francesco, Papież, Bartłomiej
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2512.09496
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author Alloula, Anissa
Jones, Charles
Wakefield-Skorniewska, Zuzanna
Quinzan, Francesco
Papież, Bartłomiej
author_facet Alloula, Anissa
Jones, Charles
Wakefield-Skorniewska, Zuzanna
Quinzan, Francesco
Papież, Bartłomiej
contents Unequal representation of demographic groups in training data poses challenges to model generalisation across populations. Standard practice assumes that balancing subgroup representation optimises performance. However, recent empirical results contradict this assumption: in some cases, imbalanced data distributions actually improve subgroup performance, while in others, subgroup performance remains unaffected by the absence of an entire subgroup during training. We conduct a systematic study of subgroup allocation across four vision and language models, varying training data composition to characterise the sensitivity of subgroup performance to data balance. We propose the latent separation hypothesis, which states that a partially fine-tuned model's dependence on subgroup representation is determined by the degree of separation between subgroups in the latent space of the pre-trained model. We formalise this hypothesis, provide theoretical analysis, and validate it empirically. Finally, we present a practical application to foundation model fine-tuning, demonstrating that quantitative analysis of latent subgroup separation can inform data collection and balancing decisions.
format Preprint
id arxiv_https___arxiv_org_abs_2512_09496
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Representation Invariance and Allocation: When Subgroup Balance Matters
Alloula, Anissa
Jones, Charles
Wakefield-Skorniewska, Zuzanna
Quinzan, Francesco
Papież, Bartłomiej
Machine Learning
Artificial Intelligence
Unequal representation of demographic groups in training data poses challenges to model generalisation across populations. Standard practice assumes that balancing subgroup representation optimises performance. However, recent empirical results contradict this assumption: in some cases, imbalanced data distributions actually improve subgroup performance, while in others, subgroup performance remains unaffected by the absence of an entire subgroup during training. We conduct a systematic study of subgroup allocation across four vision and language models, varying training data composition to characterise the sensitivity of subgroup performance to data balance. We propose the latent separation hypothesis, which states that a partially fine-tuned model's dependence on subgroup representation is determined by the degree of separation between subgroups in the latent space of the pre-trained model. We formalise this hypothesis, provide theoretical analysis, and validate it empirically. Finally, we present a practical application to foundation model fine-tuning, demonstrating that quantitative analysis of latent subgroup separation can inform data collection and balancing decisions.
title Representation Invariance and Allocation: When Subgroup Balance Matters
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2512.09496