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A Meta-Learning Approach for Custom Model Training (1809.08346v2)

Published 21 Sep 2018 in cs.LG, cs.AI, and stat.ML

Abstract: Transfer-learning and meta-learning are two effective methods to apply knowledge learned from large data sources to new tasks. In few-class, few-shot target task settings (i.e. when there are only a few classes and training examples available in the target task), meta-learning approaches that optimize for future task learning have outperformed the typical transfer approach of initializing model weights from a pre-trained starting point. But as we experimentally show, meta-learning algorithms that work well in the few-class setting do not generalize well in many-shot and many-class cases. In this paper, we propose a joint training approach that combines both transfer-learning and meta-learning. Benefiting from the advantages of each, our method obtains improved generalization performance on unseen target tasks in both few- and many-class and few- and many-shot scenarios.

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Authors (4)
  1. Amir Erfan Eshratifar (12 papers)
  2. Mohammad Saeed Abrishami (5 papers)
  3. David Eigen (14 papers)
  4. Massoud Pedram (93 papers)
Citations (6)