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Semi-flat minima and saddle points by embedding neural networks to
  overparameterization
v1v2 (latest)

Semi-flat minima and saddle points by embedding neural networks to overparameterization

12 June 2019
Kenji Fukumizu
Shoichiro Yamaguchi
Yoh-ichi Mototake
Mirai Tanaka
    3DPC
ArXiv (abs)PDFHTML

Papers citing "Semi-flat minima and saddle points by embedding neural networks to overparameterization"

10 / 10 papers shown
Title
Flat Channels to Infinity in Neural Loss Landscapes
Flat Channels to Infinity in Neural Loss Landscapes
Flavio Martinelli
Alexander Van Meegen
Berfin Simsek
W. Gerstner
Johanni Brea
10
0
0
17 Jun 2025
Connectivity Shapes Implicit Regularization in Matrix Factorization Models for Matrix Completion
Connectivity Shapes Implicit Regularization in Matrix Factorization Models for Matrix Completion
Zhiwei Bai
Jiajie Zhao
Yaoyu Zhang
AI4CE
98
0
0
22 May 2024
Loss Landscape of Shallow ReLU-like Neural Networks: Stationary Points, Saddle Escape, and Network Embedding
Loss Landscape of Shallow ReLU-like Neural Networks: Stationary Points, Saddle Escape, and Network Embedding
Zhengqing Wu
Berfin Simsek
Francois Ged
ODL
117
0
0
08 Feb 2024
Loss Spike in Training Neural Networks
Loss Spike in Training Neural Networks
Zhongwang Zhang
Z. Xu
72
7
0
20 May 2023
Linear Stability Hypothesis and Rank Stratification for Nonlinear Models
Linear Stability Hypothesis and Rank Stratification for Nonlinear Models
Yaoyu Zhang
Zhongwang Zhang
Leyang Zhang
Zhiwei Bai
Yaoyu Zhang
Z. Xu
56
8
0
21 Nov 2022
Embedding Principle in Depth for the Loss Landscape Analysis of Deep Neural Networks
Embedding Principle in Depth for the Loss Landscape Analysis of Deep Neural Networks
Zhiwei Bai
Yaoyu Zhang
Z. Xu
Yaoyu Zhang
122
6
0
26 May 2022
Embedding Principle: a hierarchical structure of loss landscape of deep
  neural networks
Embedding Principle: a hierarchical structure of loss landscape of deep neural networks
Yaoyu Zhang
Yuqing Li
Zhongwang Zhang
Yaoyu Zhang
Z. Xu
82
23
0
30 Nov 2021
Embedding Principle of Loss Landscape of Deep Neural Networks
Embedding Principle of Loss Landscape of Deep Neural Networks
Yaoyu Zhang
Zhongwang Zhang
Yaoyu Zhang
Z. Xu
67
38
0
30 May 2021
Geometry of the Loss Landscape in Overparameterized Neural Networks:
  Symmetries and Invariances
Geometry of the Loss Landscape in Overparameterized Neural Networks: Symmetries and Invariances
Berfin cSimcsek
François Ged
Arthur Jacot
Francesco Spadaro
Clément Hongler
W. Gerstner
Johanni Brea
AI4CE
87
102
0
25 May 2021
Rethinking Parameter Counting in Deep Models: Effective Dimensionality
  Revisited
Rethinking Parameter Counting in Deep Models: Effective Dimensionality Revisited
Wesley J. Maddox
Gregory W. Benton
A. Wilson
136
61
0
04 Mar 2020
1