2021
DOI: 10.48550/arxiv.2106.00553
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SHINE: SHaring the INverse Estimate from the forward pass for bi-level optimization and implicit models

Abstract: In recent years, implicit deep learning has emerged as a method to increase the depth of deep neural networks. While their training is memory-efficient, they are still significantly slower to train than their explicit counterparts. In Deep Equilibrium Models (DEQs), the training is performed as a bi-level problem, and its computational complexity is partially driven by the iterative inversion of a huge Jacobian matrix. In this paper, we propose a novel strategy to tackle this computational bottleneck from whic… Show more

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