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v-PuNNs: van der Put Neural Networks for Transparent Ultrametric Representation Learning

1 August 2025
Gnankan Landry Regis N'guessan
ArXiv (abs)PDFHTMLGithub (2★)
Main:48 Pages
19 Figures
Bibliography:3 Pages
15 Tables
Abstract

Conventional deep learning models embed data in Euclidean space Rd\mathbb{R}^dRd, a poor fit for strictly hierarchical objects such as taxa, word senses, or file systems. We introduce van der Put Neural Networks (v-PuNNs), the first architecture whose neurons are characteristic functions of p-adic balls in Zp\mathbb{Z}_pZp​. Under our Transparent Ultrametric Representation Learning (TURL) principle every weight is itself a p-adic number, giving exact subtree semantics. A new Finite Hierarchical Approximation Theorem shows that a depth-K v-PuNN with ∑j=0K−1p j\sum_{j=0}^{K-1}p^{\,j}∑j=0K−1​pj neurons universally represents any K-level tree. Because gradients vanish in this discrete space, we propose Valuation-Adaptive Perturbation Optimization (VAPO), with a fast deterministic variant (HiPaN-DS) and a moment-based one (HiPaN / Adam-VAPO). On three canonical benchmarks our CPU-only implementation sets new state-of-the-art: WordNet nouns (52,427 leaves) 99.96% leaf accuracy in 16 min; GO molecular-function 96.9% leaf / 100% root in 50 s; NCBI Mammalia Spearman ρ=−0.96\rho = -0.96ρ=−0.96 with true taxonomic distance. The learned metric is perfectly ultrametric (zero triangle violations), and its fractal and information-theoretic properties are analyzed. Beyond classification we derive structural invariants for quantum systems (HiPaQ) and controllable generative codes for tabular data (Tab-HiPaN). v-PuNNs therefore bridge number theory and deep learning, offering exact, interpretable, and efficient models for hierarchical data.

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