2022
DOI: 10.1007/s00521-022-07308-z
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A scaling calculus for the design and initialization of ReLU networks

Abstract: We propose a system for calculating a “scaling constant” for layers and weights of neural networks. We relate this scaling constant to two important quantities that relate to the optimizability of neural networks, and argue that a network that is “preconditioned” via scaling, in the sense that all weights have the same scaling constant, will be easier to train. This scaling calculus results in a number of consequences, among them the fact that the geometric mean of the fan-in and fan-out, rather than the fan-i… Show more

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