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Random active path model of deep neural networks with diluted binary synapses

机译:深神经网络与稀释二元突触的随机活动路径模型

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摘要

Deep learning has become a powerful and popular tool for a variety of machine-learning tasks. However, it is challenging to understand the mechanism of deep learning from a theoretical perspective. In this work, we propose a random active path model to study collective properties of deep neural networks with binary synapses, under the removal perturbation of connections between layers. In the model, the path from input to output is randomly activated, and the corresponding input unit constrains the weights along the path into the form of a p-weight interaction glass model. A critical value of the perturbation is observed to separate a spin-glass regime from a paramagnetic regime, with the transition being of the first order. The paramagnetic phase is conjectured to have a poor generalization performance.
机译:深度学习已成为各种机器学习任务的强大而流行的工具。 然而,了解理论视角的深度学习机制有挑战性。 在这项工作中,我们提出了一种随机的Active Path模型,以研究层间突触的深神经网络的集体特性,在层之间的连接的删除扰动下。 在该模型中,从输入到输出的路径被随机激活,并且相应的输入单元将权重沿着p重量交互玻璃模型的形式约束。 观察到扰动的临界值以与顺磁性制度分离旋转玻璃制度,其过渡是第一阶的过渡。 召集顺磁阶段以具有较差的泛化性能。

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