GENNI: Visualising the Geometry of Equivalences for Neural Network Identifiability

11/14/2020
by   Daniel Lengyel, et al.
0

We propose an efficient algorithm to visualise symmetries in neural networks. Typically, models are defined with respect to a parameter space, where non-equal parameters can produce the same input-output map. Our proposed method, GENNI, allows us to efficiently identify parameters that are functionally equivalent and then visualise the subspace of the resulting equivalence class. By doing so, we are now able to better explore questions surrounding identifiability, with applications to optimisation and generalizability, for commonly used or newly developed neural network architectures.

READ FULL TEXT

page 4

page 7

page 8

research
05/08/2023

Functional Equivalence and Path Connectivity of Reducible Hyperbolic Tangent Networks

Understanding the learning process of artificial neural networks require...
research
06/11/2019

Weight Agnostic Neural Networks

Not all neural network architectures are created equal, some perform muc...
research
03/01/2023

Multi-task neural networks by learned contextual inputs

This paper explores learned-context neural networks. It is a multi-task ...
research
12/21/2021

Regularization from examples via neural networks for parametric inverse problems: topology matters

In this work we deal with parametric inverse problems, which consist in ...
research
07/26/2022

Quiver neural networks

We develop a uniform theoretical approach towards the analysis of variou...
research
02/27/2017

Equivariance Through Parameter-Sharing

We propose to study equivariance in deep neural networks through paramet...
research
02/14/2022

Orthogonalising gradients to speed up neural network optimisation

The optimisation of neural networks can be sped up by orthogonalising th...

Please sign up or login with your details

Forgot password? Click here to reset