AI RESEARCH
Critical Organization of Deep Neural Networks, and p-Adic Statistical Field Theories
arXiv CS.LG
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ArXi:2601.19070v2 Announce Type: replace We rigorously study the thermodynamic limit of deep neural networks (DNNS) and recurrent neural networks (RNNs), assuming that the activation functions are sigmoids. A thermodynamic limit is a continuous neural network, where the neurons form a continuous space with infinitely many points. We show that such a network admits a unique state in a certain region of the parameter space, which depends continuously on the parameters. This state breaks into an infinite number of states outside the mentioned region of parameter space.