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arxiv: 2010.00352 · v1 · pith:G7P2FDNJnew · submitted 2020-10-01 · 💻 cs.CV · cs.AI

Meta-Consolidation for Continual Learning

classification 💻 cs.CV cs.AI
keywords learningcontinualboldsymbolmerlinmeta-consolidationmeta-distributionsystemsability
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The ability to continuously learn and adapt itself to new tasks, without losing grasp of already acquired knowledge is a hallmark of biological learning systems, which current deep learning systems fall short of. In this work, we present a novel methodology for continual learning called MERLIN: Meta-Consolidation for Continual Learning. We assume that weights of a neural network $\boldsymbol \psi$, for solving task $\boldsymbol t$, come from a meta-distribution $p(\boldsymbol{\psi|t})$. This meta-distribution is learned and consolidated incrementally. We operate in the challenging online continual learning setting, where a data point is seen by the model only once. Our experiments with continual learning benchmarks of MNIST, CIFAR-10, CIFAR-100 and Mini-ImageNet datasets show consistent improvement over five baselines, including a recent state-of-the-art, corroborating the promise of MERLIN.

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