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Международная конференция "Новые направления в математической физике"
8 ноября 2022 г. 18:00–18:30
 


p-Adic Neural Networks and Quantum Field Theory

W. A. Zúñiga-Galindo

University of Texas Rio Grande Valley
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MP4 282.7 Mb
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Adobe PDF 1.3 Mb

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Аннотация: The talk aims to discuss the correspondence between Euclidean quantum field theories and neural networks in the p-adic framework as presented in our recent preprint arXiv:2207.13877. In this work we initiate the study of the correspondence between p-adic statistical field theories (SFTs) and neural networks (NNs). In general quantum field theories over a p-adic spacetime can be formulated in a rigorous way. Nowadays these theories are considered just mathematical toy models for understanding the problems of the true theories. We show these theories are deeply connected with the deep belief networks (DBNs). Hinton et al. constructed DBNs by stacking several restricted Boltzmann machines (RBMs). The purpose of this construction is to obtain a network with a hierarchical structure (a deep learning architecture). An RBM corresponds to a certain spin glass, thus a DBN should correspond to an ultrametric (hierarchical) spin glass. A model of such a system can be easily constructed by using p-adic numbers. In our approach, a p-adic SFT corresponds to a p-adic continuous DBN, and a discretization of this theory corresponds to a p-adic discrete DBN. We show that these last machines are universal approximators. In the p-adic framework, the correspondence between SFTs and NNs is not fully developed. We point out several open problems.

Дополнительные материалы: Zuniga-Galindo.pdf (1.3 Mb)

Язык доклада: английский
 
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