Transfer learning with fewer ImageNet classes
2021-09-28NeurIPS Workshop ImageNet_PPF 2021Unverified0· sign in to hype
Michal Kucer, Diane Oyen
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ReproduceAbstract
Though much previous work tried to uncover the best practices for transfer learning, much is left unexplored. Our preliminary work explores the effect of removing a portion of the ImageNet classes with low per-class validation accuracy on the accuracy of the remaining classes. Furthermore, we explore if models trained with a reduced number of classes are suitable for transfer learning.