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AttNS: Attention-Inspired Numerical Solving For Limited Data Scenarios

AttNS: Attention-Inspired Numerical Solving For Limited Data Scenarios

5 February 2023
Zhongzhan Huang
Mingfu Liang
Liang Lin
Liang Lin
ArXivPDFHTML

Papers citing "AttNS: Attention-Inspired Numerical Solving For Limited Data Scenarios"

12 / 12 papers shown
Title
Efficient Climate Simulation via Machine Learning Method
Efficient Climate Simulation via Machine Learning Method
Xin Wang
Wei Xue
Yilun Han
Guangwen Yang
AILaw
59
2
0
15 Aug 2022
Fourier Neural Operator for Parametric Partial Differential Equations
Fourier Neural Operator for Parametric Partial Differential Equations
Zong-Yi Li
Nikola B. Kovachki
Kamyar Azizzadenesheli
Burigede Liu
K. Bhattacharya
Andrew M. Stuart
Anima Anandkumar
AI4CE
464
2,384
0
18 Oct 2020
Learning from Noisy Labels with Deep Neural Networks: A Survey
Learning from Noisy Labels with Deep Neural Networks: A Survey
Hwanjun Song
Minseok Kim
Dongmin Park
Yooju Shin
Jae-Gil Lee
NoLa
92
985
0
16 Jul 2020
Analyzing the Noise Robustness of Deep Neural Networks
Analyzing the Noise Robustness of Deep Neural Networks
Kelei Cao
Mengchen Liu
Hang Su
Jing Wu
Jun Zhu
Shixia Liu
AAML
119
90
0
26 Jan 2020
Towards Understanding the Spectral Bias of Deep Learning
Towards Understanding the Spectral Bias of Deep Learning
Yuan Cao
Zhiying Fang
Yue Wu
Ding-Xuan Zhou
Quanquan Gu
87
217
0
03 Dec 2019
Dynamical System Inspired Adaptive Time Stepping Controller for Residual
  Network Families
Dynamical System Inspired Adaptive Time Stepping Controller for Residual Network Families
Yibo Yang
Jianlong Wu
Hongyang Li
Xia Li
Tiancheng Shen
Zhouchen Lin
OOD
36
21
0
23 Nov 2019
DeepONet: Learning nonlinear operators for identifying differential
  equations based on the universal approximation theorem of operators
DeepONet: Learning nonlinear operators for identifying differential equations based on the universal approximation theorem of operators
Lu Lu
Pengzhan Jin
George Karniadakis
206
2,108
0
08 Oct 2019
Symplectic Recurrent Neural Networks
Symplectic Recurrent Neural Networks
Zhengdao Chen
Jianyu Zhang
Martín Arjovsky
Léon Bottou
205
224
0
29 Sep 2019
Frequency Principle: Fourier Analysis Sheds Light on Deep Neural
  Networks
Frequency Principle: Fourier Analysis Sheds Light on Deep Neural Networks
Zhi-Qin John Xu
Yaoyu Zhang
Yaoyu Zhang
Yan Xiao
Zheng Ma
119
512
0
19 Jan 2019
Gradient Descent Provably Optimizes Over-parameterized Neural Networks
Gradient Descent Provably Optimizes Over-parameterized Neural Networks
S. Du
Xiyu Zhai
Barnabás Póczós
Aarti Singh
MLT
ODL
200
1,270
0
04 Oct 2018
Neural Ordinary Differential Equations
Neural Ordinary Differential Equations
T. Chen
Yulia Rubanova
J. Bettencourt
David Duvenaud
AI4CE
351
5,081
0
19 Jun 2018
Multi-level Residual Networks from Dynamical Systems View
Multi-level Residual Networks from Dynamical Systems View
B. Chang
Lili Meng
E. Haber
Frederick Tung
David Begert
74
172
0
27 Oct 2017
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