Been There, Done That: Meta-Learning with Episodic Recall
Ritter, Samuel, Wang, Jane X., Kurth-Nelson, Zeb, Jayakumar, Siddhant M., Blundell, Charles, Pascanu, Razvan, Botvinick, Matthew
–arXiv.org Artificial Intelligence
Meta-learning agents excel at rapidly learning new tasks from open-ended task distributions; yet, they forget what they learn about each task as soon as the next begins. When tasks reoccur - as they do in natural environments - metalearning agents must explore again instead of immediately exploiting previously discovered solutions. We propose a formalism for generating open-ended yet repetitious environments, then develop a meta-learning architecture for solving these environments. This architecture melds the standard LSTM working memory with a differentiable neural episodic memory. We explore the capabilities of agents with this episodic LSTM in five meta-learning environments with reoccurring tasks, ranging from bandits to navigation and stochastic sequential decision problems.
arXiv.org Artificial Intelligence
May-24-2018
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