NELGMLJan 30, 2019

Direct Feedback Alignment with Sparse Connections for Local Learning

arXiv:1903.02083v268 citationsHas Code
AI Analysis

This addresses the weight transport problem for hardware efficiency in machine learning, though it is incremental as it builds on existing feedback alignment algorithms.

The paper tackles the inefficiency of backpropagation in deep neural networks due to data movement by proposing a bio-plausible alternative using sparse feedback alignment, showing orders of magnitude improvement in data movement and 2× reduction in multiply-and-accumulate operations, while achieving competitive accuracy by transferring trained convolutional layers and training fully connected layers with this method.

Recent advances in deep neural networks (DNNs) owe their success to training algorithms that use backpropagation and gradient-descent. Backpropagation, while highly effective on von Neumann architectures, becomes inefficient when scaling to large networks. Commonly referred to as the weight transport problem, each neuron's dependence on the weights and errors located deeper in the network require exhaustive data movement which presents a key problem in enhancing the performance and energy-efficiency of machine-learning hardware. In this work, we propose a bio-plausible alternative to backpropagation drawing from advances in feedback alignment algorithms in which the error computation at a single synapse reduces to the product of three scalar values. Using a sparse feedback matrix, we show that a neuron needs only a fraction of the information previously used by the feedback alignment algorithms. Consequently, memory and compute can be partitioned and distributed whichever way produces the most efficient forward pass so long as a single error can be delivered to each neuron. Our results show orders of magnitude improvement in data movement and $2\times$ improvement in multiply-and-accumulate operations over backpropagation. Like previous work, we observe that any variant of feedback alignment suffers significant losses in classification accuracy on deep convolutional neural networks. By transferring trained convolutional layers and training the fully connected layers using direct feedback alignment, we demonstrate that direct feedback alignment can obtain results competitive with backpropagation. Furthermore, we observe that using an extremely sparse feedback matrix, rather than a dense one, results in a small accuracy drop while yielding hardware advantages. All the code and results are available under https://github.com/bcrafton/ssdfa.

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