LGAIOCMLSep 10, 2019

Meta-Learning with Implicit Gradients

arXiv:1909.04630v1993 citations
Originality Highly original
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This addresses scalability issues in meta-learning for few-shot learning, enabling more efficient training with many gradient steps without memory constraints.

The paper tackles the computational and memory burdens of gradient-based meta-learning by introducing implicit MAML, which uses implicit differentiation to compute meta-gradients without differentiating through the inner loop, achieving empirical gains on few-shot image recognition benchmarks.

A core capability of intelligent systems is the ability to quickly learn new tasks by drawing on prior experience. Gradient (or optimization) based meta-learning has recently emerged as an effective approach for few-shot learning. In this formulation, meta-parameters are learned in the outer loop, while task-specific models are learned in the inner-loop, by using only a small amount of data from the current task. A key challenge in scaling these approaches is the need to differentiate through the inner loop learning process, which can impose considerable computational and memory burdens. By drawing upon implicit differentiation, we develop the implicit MAML algorithm, which depends only on the solution to the inner level optimization and not the path taken by the inner loop optimizer. This effectively decouples the meta-gradient computation from the choice of inner loop optimizer. As a result, our approach is agnostic to the choice of inner loop optimizer and can gracefully handle many gradient steps without vanishing gradients or memory constraints. Theoretically, we prove that implicit MAML can compute accurate meta-gradients with a memory footprint that is, up to small constant factors, no more than that which is required to compute a single inner loop gradient and at no overall increase in the total computational cost. Experimentally, we show that these benefits of implicit MAML translate into empirical gains on few-shot image recognition benchmarks.

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