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Few-shot learning is challenging for learning algorithms that learn each task in isolation and from scratch. In contrast, meta-learning learns from many related tasks a meta-learner that can learn a new task more accurately and faster with fewer examples, where the choice of meta-learners is crucial. In this paper, we develop Meta-SGD, an SGD-like, easily trainable meta-learner that can initialize and adapt any differentiable learner in just one step, on both supervised learning and reinforcement learning. Compared to the popular meta-learner LSTM, Meta-SGD is conceptually simpler, easier to implement, and can be learned more efficiently. Compared to the latest meta-learner MAML, Meta-SGD has a much higher capacity by learning to learn not just the learner initialization, but also the learner update direction and learning rate, all in a single meta-learning process. Meta-SGD shows highly competitive performance for few-shot learning on regression, classification, and reinforcement learning.
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Zhenguo Li
Nanjing Tech University
Fengwei Zhou
Huawei Technologies (China)
Fei Chen
Chinese University of Hong Kong
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Li et al. (Mon,) studied this question.
synapsesocial.com/papers/6a0edd5c53f874f2b222de0b — DOI: https://doi.org/10.48550/arxiv.1707.09835
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