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GENNI: Visualising the Geometry of Equivalences for Neural Network
  Identifiability

GENNI: Visualising the Geometry of Equivalences for Neural Network Identifiability

14 November 2020
Daniel Lengyel
Janith C. Petangoda
Isak Falk
Kate Highnam
Michalis Lazarou
A. Kolbeinsson
M. Deisenroth
N. Jennings
ArXiv (abs)PDFHTML

Papers citing "GENNI: Visualising the Geometry of Equivalences for Neural Network Identifiability"

6 / 6 papers shown
Symmetry-Aware Graph Metanetwork Autoencoders: Model Merging through Parameter Canonicalization
Symmetry-Aware Graph Metanetwork Autoencoders: Model Merging through Parameter Canonicalization
Odysseas Boufalis
Jorge Carrasco-Pollo
Joshua Rosenthal
Eduardo Terres-Caballero
Alejandro García-Castellanos
172
0
0
16 Nov 2025
Neuron-Level Analysis of Cultural Understanding in Large Language Models
Neuron-Level Analysis of Cultural Understanding in Large Language Models
Taisei Yamamoto
Ryoma Kumon
Danushka Bollegala
Hitomi Yanaka
226
0
0
09 Oct 2025
Symmetry in Neural Network Parameter Spaces
Symmetry in Neural Network Parameter Spaces
Bo Zhao
Robin Walters
Rose Yu
553
15
0
16 Jun 2025
On the Subspace Structure of Gradient-Based Meta-Learning
On the Subspace Structure of Gradient-Based Meta-Learning
Gustaf Tegnér
Alfredo Reichlin
Hang Yin
Mårten Björkman
Danica Kragic
364
0
0
08 Jul 2022
Self-supervision of wearable sensors time-series data for influenza
  detection
Self-supervision of wearable sensors time-series data for influenza detection
Arinbjorn Kolbeinsson
Piyusha S. Gade
R. Kainkaryam
Filip Jankovic
L. Foschini
OODAI4TS
193
5
0
27 Dec 2021
Geometry of the Loss Landscape in Overparameterized Neural Networks:
  Symmetries and Invariances
Geometry of the Loss Landscape in Overparameterized Neural Networks: Symmetries and InvariancesInternational Conference on Machine Learning (ICML), 2021
Berfin cSimcsek
François Ged
Arthur Jacot
Francesco Spadaro
Clément Hongler
W. Gerstner
Johanni Brea
AI4CE
362
132
0
25 May 2021
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