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Main Authors: Falahati, Ali, Amiri, Mohammad Mohammadi, Larson, Kate, Golab, Lukasz
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2605.07724
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author Falahati, Ali
Amiri, Mohammad Mohammadi
Larson, Kate
Golab, Lukasz
author_facet Falahati, Ali
Amiri, Mohammad Mohammadi
Larson, Kate
Golab, Lukasz
contents Recursive retraining of generative models poses a critical representation challenge: when synthetic outputs are curated based on a fixed reward signal, the model tends to collapse onto a narrow set of outputs that over-optimize that objective. Prior work suggests that such collapse is unavoidable without adding real data into the mix. We revisit this conclusion from an alignment perspective and show that collapse can be mitigated through curation based on multiple reward functions. We formalize the dynamics of recursive training under heterogeneous preferences and prove that, under certain conditions, the model converges to a stable distribution that allocates probability mass across competing high-reward regions. The limiting distribution preserves diversity and provably satisfies a weighted Nash bargaining solution, offering a formal interpretation of value aggregation in synthetic retraining loops.
format Preprint
id arxiv_https___arxiv_org_abs_2605_07724
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Curated Synthetic Data Doesn't Have to Collapse: A Theoretical Study of Generative Retraining with Pluralistic Preferences
Falahati, Ali
Amiri, Mohammad Mohammadi
Larson, Kate
Golab, Lukasz
Machine Learning
Artificial Intelligence
Recursive retraining of generative models poses a critical representation challenge: when synthetic outputs are curated based on a fixed reward signal, the model tends to collapse onto a narrow set of outputs that over-optimize that objective. Prior work suggests that such collapse is unavoidable without adding real data into the mix. We revisit this conclusion from an alignment perspective and show that collapse can be mitigated through curation based on multiple reward functions. We formalize the dynamics of recursive training under heterogeneous preferences and prove that, under certain conditions, the model converges to a stable distribution that allocates probability mass across competing high-reward regions. The limiting distribution preserves diversity and provably satisfies a weighted Nash bargaining solution, offering a formal interpretation of value aggregation in synthetic retraining loops.
title Curated Synthetic Data Doesn't Have to Collapse: A Theoretical Study of Generative Retraining with Pluralistic Preferences
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2605.07724