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$p$-Adic Polynomial Regression as Alternative to Neural Network for Approximating $p$-Adic Functions of Many Variables

Published 30 Mar 2025 in math-ph, cs.LG, cs.NA, math.MP, math.NA, math.NT, and math.OC | (2503.23488v2)

Abstract: A method for approximating continuous functions $\mathbb{Z}{p}{n}\rightarrow\mathbb{Z}{p}$ by a linear superposition of continuous functions $\mathbb{Z}{p}\rightarrow\mathbb{Z}{p}$ is presented and a polynomial regression model is constructed that allows approximating such functions with any degree of accuracy. A physical interpretation of such a model is given and possible methods for its training are discussed. The proposed model can be considered as a simple alternative to possible $p$-adic models based on neural network architecture.

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