Nested Hyperbolic Spaces for Dimensionality Reduction and Hyperbolic NN Design
Xiran Fan, Chun-Hao Yang, Baba C. Vemuri

TL;DR
This paper introduces a novel fully hyperbolic neural network utilizing a projection-based nested hyperbolic space for effective hierarchical data representation and dimensionality reduction, with theoretical guarantees and competitive experimental results.
Contribution
It proposes a new hyperbolic neural network with an isometric, equivariant projection into nested hyperbolic spaces, enabling efficient dimensionality reduction and weight sharing.
Findings
The projection is isometric and Lorentz-equivariant.
The nested hyperbolic space improves dimensionality reduction.
The network achieves competitive performance on benchmark datasets.
Abstract
Hyperbolic neural networks have been popular in the recent past due to their ability to represent hierarchical data sets effectively and efficiently. The challenge in developing these networks lies in the nonlinearity of the embedding space namely, the Hyperbolic space. Hyperbolic space is a homogeneous Riemannian manifold of the Lorentz group. Most existing methods (with some exceptions) use local linearization to define a variety of operations paralleling those used in traditional deep neural networks in Euclidean spaces. In this paper, we present a novel fully hyperbolic neural network which uses the concept of projections (embeddings) followed by an intrinsic aggregation and a nonlinearity all within the hyperbolic space. The novelty here lies in the projection which is designed to project data on to a lower-dimensional embedded hyperbolic space and hence leads to a nested…
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Taxonomy
TopicsMedical Imaging and Analysis · 3D Shape Modeling and Analysis · Advanced Numerical Analysis Techniques
MethodsPrincipal Components Analysis
