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A three layer neural network can represent any multivariate function
v1v2 (latest)

A three layer neural network can represent any multivariate function

5 December 2020
V. Ismailov
ArXiv (abs)PDFHTML

Papers citing "A three layer neural network can represent any multivariate function"

8 / 8 papers shown
Kolmogorov GAM Networks are all you need!
Kolmogorov GAM Networks are all you need!Entropy (Entropy), 2025
Sarah Polson
Vadim Sokolov
268
2
0
03 Jan 2025
Generalizable autoregressive modeling of time series through functional
  narratives
Generalizable autoregressive modeling of time series through functional narratives
Ran Liu
Wenrui Ma
Ellen L. Zippi
Hadi Pouransari
Jingyun Xiao
...
Behrooz Mahasseni
Juri Minxha
Erdrin Azemi
Eva L. Dyer
Ali Moin
AI4TS
315
2
0
10 Oct 2024
Addressing common misinterpretations of KART and UAT in neural network literature
Addressing common misinterpretations of KART and UAT in neural network literatureNeural Networks (NN), 2024
Vugar Ismailov
HAI
568
5
0
29 Aug 2024
On the Anatomy of Attention
On the Anatomy of Attention
Nikhil Khatri
Tuomas Laakkonen
Jonathon Liu
Vincent Wang-Ma'scianica
3DV
471
1
0
02 Jul 2024
Conformalized Deep Splines for Optimal and Efficient Prediction Sets
Conformalized Deep Splines for Optimal and Efficient Prediction SetsInternational Conference on Artificial Intelligence and Statistics (AISTATS), 2023
N. Diamant
Ehsan Hajiramezanali
Tommaso Biancalani
Gabriele Scalia
314
4
0
01 Nov 2023
Data Topology-Dependent Upper Bounds of Neural Network Widths
Data Topology-Dependent Upper Bounds of Neural Network Widths
Sangmin Lee
Jong Chul Ye
279
1
0
25 May 2023
JAX-DIPS: Neural bootstrapping of finite discretization methods and
  application to elliptic problems with discontinuities
JAX-DIPS: Neural bootstrapping of finite discretization methods and application to elliptic problems with discontinuitiesJournal of Computational Physics (JCP), 2022
Pouria A. Mistani
Samira Pakravan
Rajesh Ilango
Frédéric Gibou
273
13
0
25 Oct 2022
Physics-enhanced deep surrogates for partial differential equations
Physics-enhanced deep surrogates for partial differential equations
R. Pestourie
Youssef Mroueh
Chris Rackauckas
Payel Das
Steven G. Johnson
PINNAI4CE
366
38
0
10 Nov 2021
1
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