SMRS: advocating a unified reporting standard for surrogate models in the artificial intelligence era
SMRS: advocating a unified reporting standard for surrogate models in the artificial intelligence era
Surrogate models are widely used to approximate complex systems across science and engineering to reduce computational costs. Despite their widespread adoption, the field lacks standardisation across key stages of the modelling pipeline, including data sampling, model selection, evaluation, and downstream analysis. This fragmentation limits reproducibility and cross-domain utility -- a challenge further exacerbated by the rapid proliferation of AI-driven surrogate models. We argue for the urgent need to establish a structured reporting standard, the Surrogate Model Reporting Standard (SMRS), that systematically captures essential design and evaluation choices while remaining agnostic to implementation specifics. By promoting a standardised yet flexible framework, we aim to improve the reliability of surrogate modelling, foster interdisciplinary knowledge transfer, and, as a result, accelerate scientific progress in the AI era.
stat.CO, cs.LG
Semenova, Elizaveta
336892d0-0c3d-4544-bdcd-17cdd40f2639
Sheinkman, Alisa
7e74970b-0b52-434a-9b43-7055507810f5
Hitge, Timothy James
ddcbc41e-44b9-4680-8fad-f6e9c7d193c6
Hall, Siobhan Mackenzie
b024d2ec-93ad-49a9-bee8-36a4a715792a
Cockayne, Jon
da87c8b2-fafb-4856-938d-50be8f0e4a5b
10 February 2025
Semenova, Elizaveta
336892d0-0c3d-4544-bdcd-17cdd40f2639
Sheinkman, Alisa
7e74970b-0b52-434a-9b43-7055507810f5
Hitge, Timothy James
ddcbc41e-44b9-4680-8fad-f6e9c7d193c6
Hall, Siobhan Mackenzie
b024d2ec-93ad-49a9-bee8-36a4a715792a
Cockayne, Jon
da87c8b2-fafb-4856-938d-50be8f0e4a5b
[Unknown type: UNSPECIFIED]
Abstract
Surrogate models are widely used to approximate complex systems across science and engineering to reduce computational costs. Despite their widespread adoption, the field lacks standardisation across key stages of the modelling pipeline, including data sampling, model selection, evaluation, and downstream analysis. This fragmentation limits reproducibility and cross-domain utility -- a challenge further exacerbated by the rapid proliferation of AI-driven surrogate models. We argue for the urgent need to establish a structured reporting standard, the Surrogate Model Reporting Standard (SMRS), that systematically captures essential design and evaluation choices while remaining agnostic to implementation specifics. By promoting a standardised yet flexible framework, we aim to improve the reliability of surrogate modelling, foster interdisciplinary knowledge transfer, and, as a result, accelerate scientific progress in the AI era.
Text
2502.06753v3
- Author's Original
Text
2502.06753v3
- Author's Original
Text
2502.06753v3
- Accepted Manuscript
More information
Accepted/In Press date: 10 February 2025
Published date: 10 February 2025
Additional Information:
Accepted at the 39th Conference on Neural Information Processing Systems (NeurIPS 2025), Position Track
Keywords:
stat.CO, cs.LG
Identifiers
Local EPrints ID: 508003
URI: http://eprints.soton.ac.uk/id/eprint/508003
ISSN: 2331-8422
PURE UUID: 4e3bcaf6-3b7f-405c-90d1-2546cf91798a
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Date deposited: 09 Jan 2026 17:41
Last modified: 16 Jan 2026 03:01
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Contributors
Author:
Elizaveta Semenova
Author:
Alisa Sheinkman
Author:
Timothy James Hitge
Author:
Siobhan Mackenzie Hall
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