Which Model to Transfer? Finding the Needle in the Growing Haystack

October 13, 2020 ยท Declared Dead ยท ๐Ÿ› Computer Vision and Pattern Recognition

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Authors Cedric Renggli, Andrรฉ Susano Pinto, Luka Rimanic, Joan Puigcerver, Carlos Riquelme, Ce Zhang, Mario Lucic arXiv ID 2010.06402 Category cs.LG: Machine Learning Cross-listed cs.CV Citations 32 Venue Computer Vision and Pattern Recognition Last Checked 4 months ago
Abstract
Transfer learning has been recently popularized as a data-efficient alternative to training models from scratch, in particular for computer vision tasks where it provides a remarkably solid baseline. The emergence of rich model repositories, such as TensorFlow Hub, enables the practitioners and researchers to unleash the potential of these models across a wide range of downstream tasks. As these repositories keep growing exponentially, efficiently selecting a good model for the task at hand becomes paramount. We provide a formalization of this problem through a familiar notion of regret and introduce the predominant strategies, namely task-agnostic (e.g. ranking models by their ImageNet performance) and task-aware search strategies (such as linear or kNN evaluation). We conduct a large-scale empirical study and show that both task-agnostic and task-aware methods can yield high regret. We then propose a simple and computationally efficient hybrid search strategy which outperforms the existing approaches. We highlight the practical benefits of the proposed solution on a set of 19 diverse vision tasks.
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