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Gradient-EM Bayesian Meta-learning (2006.11764v2)

Published 21 Jun 2020 in cs.LG and stat.ML

Abstract: Bayesian meta-learning enables robust and fast adaptation to new tasks with uncertainty assessment. The key idea behind Bayesian meta-learning is empirical Bayes inference of hierarchical model. In this work, we extend this framework to include a variety of existing methods, before proposing our variant based on gradient-EM algorithm. Our method improves computational efficiency by avoiding back-propagation computation in the meta-update step, which is exhausting for deep neural networks. Furthermore, it provides flexibility to the inner-update optimization procedure by decoupling it from meta-update. Experiments on sinusoidal regression, few-shot image classification, and policy-based reinforcement learning show that our method not only achieves better accuracy with less computation cost, but is also more robust to uncertainty.

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Authors (2)
  1. Yayi Zou (4 papers)
  2. Xiaoqi Lu (1 paper)
Citations (16)

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