AI RESEARCH
Growing a Neural Network in Breadth, Depth, and Time
arXiv CS.LG
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ArXi:2605.25174v1 Announce Type: cross Spatial and temporal resource constraints are critical for both biological and artificial intelligent systems. Here we define differentiable cost terms for breadth, depth, and time within a recurrent convolutional neural network conceived as a finite subset of an infinite lattice. We optimize these costs jointly with task errors via backpropagation. We set different pressures on breadth, depth, and time, which leads to diverse computational graphs emerging organically through.