Skip to yearly menu bar Skip to main content


Poster

Reinforced Continual Learning

Ju Xu · Zhanxing Zhu

Room 210 #40

Keywords: [ Reinforcement Learning ] [ Deep Learning ]


Abstract:

Most artificial intelligence models are limited in their ability to solve new tasks faster, without forgetting previously acquired knowledge. The recently emerging paradigm of continual learning aims to solve this issue, in which the model learns various tasks in a sequential fashion. In this work, a novel approach for continual learning is proposed, which searches for the best neural architecture for each coming task via sophisticatedly designed reinforcement learning strategies. We name it as Reinforced Continual Learning. Our method not only has good performance on preventing catastrophic forgetting but also fits new tasks well. The experiments on sequential classification tasks for variants of MNIST and CIFAR-100 datasets demonstrate that the proposed approach outperforms existing continual learning alternatives for deep networks.

Live content is unavailable. Log in and register to view live content