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Auteurs principaux: Han, Xing, Liu, Ziyin, Saria, Suchi, Liang, Paul Pu
Format: Preprint
Publié: 2026
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Accès en ligne:https://arxiv.org/abs/2605.07546
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author Han, Xing
Liu, Ziyin
Saria, Suchi
Liang, Paul Pu
author_facet Han, Xing
Liu, Ziyin
Saria, Suchi
Liang, Paul Pu
contents Neural scaling laws establish a predictable relationship between model performance and data or compute, offering crucial guidance for resource allocation in new domains and tasks. Yet such laws are most needed precisely where they are hardest to obtain: fitting one for a new model task pair demands expensive sweeps that typically exhaust the very compute budget the law is meant to economize. This paper poses the research question of how to develop generalizable scaling laws: laws fit once on a well-resourced source domain and reliably transported to new domains where running a full sweep is infeasible, which requires a fundamental understanding of when and why scaling properties change. We address this by identifying the right invariants: scaling laws are preserved under bijective (information-preserving) transformations of the data and modified in predictable, information-theoretically grounded ways under non-bijective transformations that lower its information resolution $ρ$: a single axis along which a law fit in one domain can be transported to another. We validate this across language, vision, and speech, and demonstrate two cross-domain applications: predicting scaling for language models trained on electronic health records from laws fit on general text, and predicting time-series classification scaling under varying levels of noise injection, recovering the data-scaling exponents to within $3\%$ error.
format Preprint
id arxiv_https___arxiv_org_abs_2605_07546
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle On the Invariance and Generality of Neural Scaling Laws
Han, Xing
Liu, Ziyin
Saria, Suchi
Liang, Paul Pu
Machine Learning
Neural scaling laws establish a predictable relationship between model performance and data or compute, offering crucial guidance for resource allocation in new domains and tasks. Yet such laws are most needed precisely where they are hardest to obtain: fitting one for a new model task pair demands expensive sweeps that typically exhaust the very compute budget the law is meant to economize. This paper poses the research question of how to develop generalizable scaling laws: laws fit once on a well-resourced source domain and reliably transported to new domains where running a full sweep is infeasible, which requires a fundamental understanding of when and why scaling properties change. We address this by identifying the right invariants: scaling laws are preserved under bijective (information-preserving) transformations of the data and modified in predictable, information-theoretically grounded ways under non-bijective transformations that lower its information resolution $ρ$: a single axis along which a law fit in one domain can be transported to another. We validate this across language, vision, and speech, and demonstrate two cross-domain applications: predicting scaling for language models trained on electronic health records from laws fit on general text, and predicting time-series classification scaling under varying levels of noise injection, recovering the data-scaling exponents to within $3\%$ error.
title On the Invariance and Generality of Neural Scaling Laws
topic Machine Learning
url https://arxiv.org/abs/2605.07546