
TL;DR
This paper introduces Von Neumann Networks, a new neural architecture inspired by von Neumann's cellular model, capable of learning specialized neurons and outperforming traditional deep networks on basic tasks.
Contribution
The work develops a mathematical framework for VNNs, demonstrating their universality and potential for self-engineered, efficient neural architectures.
Findings
VNNs outperform equivalent deep networks on basic tasks
VNNs are more parameter-efficient
VNNs can learn to extend Von Neumann architecture
Abstract
In the mid-twentieth century, mathematician and polymath John von Neumann created a computational system on an array of cells as a simple model of the human brain, where each cell had one of a finite set of roles or states that he predicted would be modelled by a diffusion process. In this work, we show that such a system, when developed in a modern deep learning setting, enables the construction of an artificial neuron having specialized roles that can be learnt. We refer to this neuron as the Von Neumann neuron, and the resulting neural network from such neurons result in a self-engineered design whose architecture is only dependent on the structure and locations of its inputs and outputs on this cellular array. The mathematical framework for these Von Neumann Networks (VNNs) is also constructed and shows that they are based on the extension of neural operators and the learning of…
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