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Surprisingly Strong Performance Prediction with Neural Graph Features
- 1.0587051 - ÚI 2025 eng C - Conference Paper (international conference)
Kadlecová, Gabriela - Lukasik, J. - Pilát, Martin - Vidnerová, Petra - Safari, M. - Neruda, Roman - Hutter, F.
Surprisingly Strong Performance Prediction with Neural Graph Features.
[ICML 2024: International Conference on Machine Learning /41./. Vienna (AT), 21.07.2024-27.07.2024]
R&D Projects: GA ČR(CZ) GA22-02067S
Research Infrastructure: e-INFRA CZ II - 90254
Institutional support: RVO:67985807
Keywords : Neural architecture search * Zero-cost proxies * Performance prediction
OECD category: Computer sciences, information science, bioinformathics (hardware development to be 2.2, social aspect to be 5.8)
Performance prediction has been a key part of the neural architecture search (NAS) process, allowing to speed up NAS algorithms by avoiding resource-consuming network training. Although many performance predictors correlate well with ground truth performance, they require training data in the form of trained networks. Recently, zero-cost proxies have been proposed as an efficient method to estimate network performance without any training. However, they are still poorly understood, exhibit biases with network properties, and their performance is limited. Inspired by the drawbacks of zero-cost proxies, we propose neural graph features (GRAF), simple to compute properties of architectural graphs. GRAF offers fast and interpretable performance prediction while outperforming zero-cost proxies and other common encodings. In combination with other zero-cost proxies, GRAF outperforms most existing performance predictors at a fraction of the cost.
Permanent Link: https://hdl.handle.net/11104/0354383
File Download Size Commentary Version Access 0587051-fin.pdf 6 1.7 MB CC BY 4.0 Author´s preprint open-access
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