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Direct Feedback Alignment Scales to Modern Deep Learning Tasks and Architectures

Direct Feedback Alignment is capable of training various deep learning architectures across multiple domains with performance comparable to fine-tuned backpropagation without the need for weight transport.

Year
2020
Venue
NeurIPS 2020 12
Authors
4
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arxiv.org/abs/2006.12878v2ARXIV-DEFAULT
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Abstract

Despite being the workhorse of deep learning, the backpropagation algorithm is no panacea. It enforces sequential layer updates, thus preventing efficient parallelization of the training process. Furthermore, its biological plausibility is being challenged. Alternative schemes have been devised; yet, under the constraint of synaptic asymmetry, none have scaled to modern deep learning tasks and architectures. Here, we challenge this perspective, and study the applicability of Direct Feedback Alignment to neural view synthesis, recommender systems, geometric learning, and natural language processing. In contrast with previous studies limited to computer vision tasks, our findings show that it successfully trains a large range of state-of-the-art deep learning architectures, with performance close to fine-tuned backpropagation. At variance with common beliefs, our work supports that challenging tasks can be tackled in the absence of weight transport.

Authors

4