Metalearned Neural Memory

NeurIPS 2019 Tsendsuren MunkhdalaiAlessandro SordoniTong WangAdam Trischler

We augment recurrent neural networks with an external memory mechanism that builds upon recent progress in metalearning. We conceptualize this memory as a rapidly adaptable function that we parameterize as a deep neural network... (read more)

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