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What Can Be Learnt With Wide Convolutional Neural Networks?

What Can Be Learnt With Wide Convolutional Neural Networks?

1 August 2022
Francesco Cagnetta
Alessandro Favero
M. Wyart
    MLT
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Papers citing "What Can Be Learnt With Wide Convolutional Neural Networks?"

9 / 9 papers shown
Title
Scaling Laws and Representation Learning in Simple Hierarchical Languages: Transformers vs. Convolutional Architectures
Scaling Laws and Representation Learning in Simple Hierarchical Languages: Transformers vs. Convolutional Architectures
Francesco Cagnetta
Alessandro Favero
Antonio Sclocchi
M. Wyart
26
0
0
11 May 2025
Learning curves theory for hierarchically compositional data with power-law distributed features
Learning curves theory for hierarchically compositional data with power-law distributed features
Francesco Cagnetta
Hyunmo Kang
M. Wyart
36
0
0
11 May 2025
U-Nets as Belief Propagation: Efficient Classification, Denoising, and
  Diffusion in Generative Hierarchical Models
U-Nets as Belief Propagation: Efficient Classification, Denoising, and Diffusion in Generative Hierarchical Models
Song Mei
3DV
AI4CE
DiffM
41
11
0
29 Apr 2024
NTK-Guided Few-Shot Class Incremental Learning
NTK-Guided Few-Shot Class Incremental Learning
Jingren Liu
Zhong Ji
Yanwei Pang
Yunlong Yu
CLL
34
3
0
19 Mar 2024
Task Arithmetic in the Tangent Space: Improved Editing of Pre-Trained
  Models
Task Arithmetic in the Tangent Space: Improved Editing of Pre-Trained Models
Guillermo Ortiz-Jiménez
Alessandro Favero
P. Frossard
MoMe
37
103
0
22 May 2023
On the inability of Gaussian process regression to optimally learn
  compositional functions
On the inability of Gaussian process regression to optimally learn compositional functions
M. Giordano
Kolyan Ray
Johannes Schmidt-Hieber
31
12
0
16 May 2022
Data-driven emergence of convolutional structure in neural networks
Data-driven emergence of convolutional structure in neural networks
Alessandro Ingrosso
Sebastian Goldt
48
38
0
01 Feb 2022
Spectrum Dependent Learning Curves in Kernel Regression and Wide Neural
  Networks
Spectrum Dependent Learning Curves in Kernel Regression and Wide Neural Networks
Blake Bordelon
Abdulkadir Canatar
C. Pehlevan
131
200
0
07 Feb 2020
Norm-Based Capacity Control in Neural Networks
Norm-Based Capacity Control in Neural Networks
Behnam Neyshabur
Ryota Tomioka
Nathan Srebro
114
577
0
27 Feb 2015
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