Home
Scholarly Works
Capacity bounds for hyperbolic neural network...
Journal article

Capacity bounds for hyperbolic neural network representations of latent tree structures

Abstract

We study the representation capacity of deep hyperbolic neural networks (HNNs) with a ReLU activation function. We establish the first proof that HNNs can ɛ-isometrically embed any finite weighted tree into a hyperbolic space of dimension d at least equal to 2 with prescribed sectional curvature κ<0, for any ɛ>1 (where ɛ=1 being optimal). We establish rigorous upper bounds for the network complexity on an HNN implementing the embedding. We find that the network complexity of HNN implementing the graph representation is independent of the representation fidelity/distortion. We contrast this result against our lower bounds on distortion which any ReLU multi-layer perceptron (MLP) must exert when embedding a tree with L>2d leaves into a d-dimensional Euclidean space, which we show at least Ω(L1/d); independently of the depth, width, and (possibly discontinuous) activation function defining the MLP.

Authors

Kratsios A; Hong R; Sáez de Ocáriz Borde H

Journal

Neural Networks, Vol. 178, ,

Publisher

Elsevier

Publication Date

October 1, 2024

DOI

10.1016/j.neunet.2024.106420

ISSN

0893-6080

Contact the Experts team