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This paper conducts extensive simulations across multiple datasets and LLMs to address key gaps in the study of model collapse and proposes a perplexity-based filtering strategy that prioritizes high-surprise documents during fine-tuning.
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As AI-generated content increasingly populates the web, generative AI models are at growing risk of being trained on their own outputs, a process known as AI autophagy. This feedback loop has been shown to induce model collapse, typically characterized by a loss of diversity in generated content. However, existing work offers a limited understanding of this phenomenon and relies on mitigation strategies that assume access to human-authored data. In this paper, we conduct extensive simulations across multiple datasets and LLMs to address key gaps in the study of model collapse. First, we introduce model-intrinsic measures based on next-token probability distributions, showing that model collapse corresponds to an increasing concentration of probability mass on a small set of tokens. Second, we demonstrate that model collapse is also associated with a loss of common sense, as measured by a decline in commonsense inference accuracy. Third, we identify perplexity (a measure of model “surprise”) as a key driver of collapse: fine-tuning on the least ”surprising” documents leads to more severe degeneration. Building on this insight, we propose a perplexity-based filtering strategy that prioritizes high-surprise documents during fine-tuning. Unlike existing approaches, our method does not require distinguishing between human-authored and AI-generated content. Across datasets and LLM families, this strategy consistently mitigates model collapse, achieving performance comparable to, and in some cases better than, human-data baselines, while substantially reducing the concentration of next-token probabilities. Overall, our results provide a unified, model-centric understanding of model collapse and suggest practical, scalable strategies for training generative AI systems in increasingly synthetic environments.
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@article{Gambetta2026Learning,
title = {Learning by Surprise: Adaptive Mitigation of Model Collapse in Large Language Models},
author = {Daniele Gambetta and Gizem Gezi̇ci and Fosca Giannotti and Dino Pedreschi and Alistair Knott and Luca Pappalardo},
journal = {ACM Transactions on Intelligent Systems and Technology},
year = {2026},
doi = {10.1145/3828663},
url = {https://doi.org/10.1145/3828663}
}
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