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Limitations of Deep Learning for Inverse Problems on Digital Hardware

Limitations of Deep Learning for Inverse Problems on Digital Hardware

28 February 2022
Holger Boche
Adalbert Fono
Gitta Kutyniok
ArXivPDFHTML

Papers citing "Limitations of Deep Learning for Inverse Problems on Digital Hardware"

11 / 11 papers shown
Title
Deep-Unrolling Multidimensional Harmonic Retrieval Algorithms on
  Neuromorphic Hardware
Deep-Unrolling Multidimensional Harmonic Retrieval Algorithms on Neuromorphic Hardware
Vlad-Costin Andrei
Alexandru P. Drăguţoiu
Gabriel Béna
Mahmoud Akl
Yin Li
Matthias Lohrmann
U. Mönich
Holger Boche
66
0
0
05 Dec 2024
Computability of Classification and Deep Learning: From Theoretical
  Limits to Practical Feasibility through Quantization
Computability of Classification and Deep Learning: From Theoretical Limits to Practical Feasibility through Quantization
Holger Boche
Vít Fojtík
Adalbert Fono
Gitta Kutyniok
24
0
0
12 Aug 2024
Mathematical Algorithm Design for Deep Learning under Societal and
  Judicial Constraints: The Algorithmic Transparency Requirement
Mathematical Algorithm Design for Deep Learning under Societal and Judicial Constraints: The Algorithmic Transparency Requirement
Holger Boche
Adalbert Fono
Gitta Kutyniok
FaML
23
4
0
18 Jan 2024
Reliable AI: Does the Next Generation Require Quantum Computing?
Reliable AI: Does the Next Generation Require Quantum Computing?
Aras Bacho
Holger Boche
Gitta Kutyniok
11
2
0
03 Jul 2023
Computability of Optimizers
Computability of Optimizers
Yunseok Lee
Holger Boche
Gitta Kutyniok
22
16
0
15 Jan 2023
Limitations of neural network training due to numerical instability of
  backpropagation
Limitations of neural network training due to numerical instability of backpropagation
Clemens Karner
V. Kazeev
P. Petersen
19
3
0
03 Oct 2022
Deep neural networks can stably solve high-dimensional, noisy,
  non-linear inverse problems
Deep neural networks can stably solve high-dimensional, noisy, non-linear inverse problems
Andrés Felipe Lerma Pineda
P. Petersen
6
5
0
02 Jun 2022
NESTANets: Stable, accurate and efficient neural networks for
  analysis-sparse inverse problems
NESTANets: Stable, accurate and efficient neural networks for analysis-sparse inverse problems
Maksym Neyra-Nesterenko
Ben Adcock
20
9
0
02 Mar 2022
A Rate-Distortion Framework for Explaining Black-box Model Decisions
A Rate-Distortion Framework for Explaining Black-box Model Decisions
Stefan Kolek
Duc Anh Nguyen
Ron Levie
Joan Bruna
Gitta Kutyniok
16
14
0
12 Oct 2021
The troublesome kernel -- On hallucinations, no free lunches and the
  accuracy-stability trade-off in inverse problems
The troublesome kernel -- On hallucinations, no free lunches and the accuracy-stability trade-off in inverse problems
N. Gottschling
Vegard Antun
A. Hansen
Ben Adcock
8
30
0
05 Jan 2020
Learning to See in the Dark
Learning to See in the Dark
Cheng Chen
Qifeng Chen
Jia Xu
V. Koltun
168
1,157
0
04 May 2018
1