Model Selection with Model Zoo via Graph Learning

Conference Paper (2024)
Authors

Z. Li (TU Delft - Electrical Engineering, Mathematics and Computer Science)

H.J. Van Der Wilk (TU Delft - Electrical Engineering, Mathematics and Computer Science)

D. Zhan (TU Delft - Web Information Systems)

M. Khosla (Multimedia Computing)

A. Bozzon (TU Delft - Human-Centred Artificial Intelligence)

R. Hai (TU Delft - Web Information Systems)

Research Group
Web Information Systems
To reference this document use:
https://doi.org/10.1109/ICDE60146.2024.00088
More Info
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Publication Year
2024
Language
English
Research Group
Web Information Systems
Bibliographical Note
Green Open Access added to TU Delft Institutional Repository ‘You share, we take care!’ – Taverne project https://www.openaccess.nl/en/you-share-we-take-care Otherwise as indicated in the copyright section: the publisher is the copyright holder of this work and the author uses the Dutch legislation to make this work public. @en
Pages (from-to)
1296-1309
ISBN (electronic)
9798350317152
DOI:
https://doi.org/10.1109/ICDE60146.2024.00088
Reuse Rights

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Abstract

Pre-trained deep learning (DL) models are increasingly accessible in public repositories, i.e., model zoos. Given a new prediction task, finding the best model to fine-tune can be computationally intensive and costly, especially when the number of pre-trained models is large. Selecting the right pre-trained models is crucial, yet complicated by the diversity of models from various model families (like ResNet, Vit, Swin) and the hidden relationships between models and datasets. Existing methods, which utilize basic information from models and datasets to compute scores indicating model performance on target datasets, overlook the intrinsic relationships, limiting their effectiveness in model selection. In this study, we introduce TransferGraph, a novel framework that reformulates model selection as a graph learning problem. TransferGraph constructs a graph using extensive metadata extracted from models and datasets, while capturing their inherent relationships. Through comprehensive experiments across 16 real datasets, both images and texts, we demonstrate TransferGraph's effectiveness in capturing essential model-dataset relationships, yielding up to a 32% improvement in correlation between predicted performance and the actual fine-tuning results compared to the state-of-the-art methods.

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