The Geometry of the Set of Equivalent Linear Neural Networks
Jonathan Richard Shewchuk, Sagnik Bhattacharya

TL;DR
This paper explores the geometric and topological structure of the set of all weight vectors that produce the same linear transformation in linear neural networks, revealing a stratified algebraic variety with manifold properties.
Contribution
It introduces a detailed stratification of the fiber of linear neural networks, characterizes its geometric properties, and provides a decomposition framework for understanding information flow.
Findings
The fiber forms an algebraic variety with a stratified manifold structure.
Dimensions and relationships of the strata are explicitly derived.
A Fundamental Theorem of Linear Neural Networks is established.
Abstract
We characterize the geometry and topology of the set of all weight vectors for which a linear neural network computes the same linear transformation . This set of weight vectors is called the fiber of (under the matrix multiplication map), and it is embedded in the Euclidean weight space of all possible weight vectors. The fiber is an algebraic variety that is not necessarily a manifold. We describe a natural way to stratify the fiber--that is, to partition the algebraic variety into a finite set of manifolds of varying dimensions called strata. We call this set of strata the rank stratification. We derive the dimensions of these strata and the relationships by which they adjoin each other. Although the strata are disjoint, their closures are not. Our strata satisfy the frontier condition: if a stratum intersects the closure of another stratum, then the former stratum is a subset…
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Taxonomy
TopicsNeural Networks and Applications
MethodsSparse Evolutionary Training
