Efficient Automatic Meta Optimization Search for Few-Shot Learning

September 06, 2019 ยท Declared Dead ยท ๐Ÿ› Chinese Conference on Pattern Recognition and Computer Vision

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Authors Xinyue Zheng, Peng Wang, Qigang Wang, Zhongchao shi, Feiyu Xu arXiv ID 1909.03817 Category cs.LG: Machine Learning Cross-listed cs.CV, cs.NE Citations 0 Venue Chinese Conference on Pattern Recognition and Computer Vision Last Checked 4 months ago
Abstract
Previous works on meta-learning either relied on elaborately hand-designed network structures or adopted specialized learning rules to a particular domain. We propose a universal framework to optimize the meta-learning process automatically by adopting neural architecture search technique (NAS). NAS automatically generates and evaluates meta-learner's architecture for few-shot learning problems, while the meta-learner uses meta-learning algorithm to optimize its parameters based on the distribution of learning tasks. Parameter sharing and experience replay are adopted to accelerate the architectures searching process, so it takes only 1-2 GPU days to find good architectures. Extensive experiments on Mini-ImageNet and Omniglot show that our algorithm excels in few-shot learning tasks. The best architecture found on Mini-ImageNet achieves competitive results when transferred to Omniglot, which shows the high transferability of architectures among different computer vision problems.
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