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Neural SDE: Stabilizing Neural ODE Networks with Stochastic Noise

Neural SDE: Stabilizing Neural ODE Networks with Stochastic Noise

5 June 2019
Xuanqing Liu
Tesi Xiao
Si Si
Qin Cao
Sanjiv Kumar
Cho-Jui Hsieh
ArXivPDFHTML

Papers citing "Neural SDE: Stabilizing Neural ODE Networks with Stochastic Noise"

39 / 39 papers shown
Title
Robust Asymmetric Heterogeneous Federated Learning with Corrupted Clients
Xiuwen Fang
Mang Ye
Bo Du
FedML
79
1
0
12 Mar 2025
Learning to Decouple Complex Systems
Learning to Decouple Complex Systems
Zihan Zhou
Tianshu Yu
BDL
79
4
0
17 Feb 2025
Universal randomised signatures for generative time series modelling
Universal randomised signatures for generative time series modelling
Francesca Biagini
Lukas Gonon
Niklas Walter
44
4
0
14 Jun 2024
Continuous-Time Digital Twin with Analogue Memristive Neural Ordinary
  Differential Equation Solver
Continuous-Time Digital Twin with Analogue Memristive Neural Ordinary Differential Equation Solver
Hegan Chen
Jichang Yang
Jia Chen
Songqi Wang
Shaocong Wang
...
Han Wang
Dashan Shang
Qi Liu
Kwang-Ting Cheng
Ming Liu
52
0
0
12 Jun 2024
From Fourier to Neural ODEs: Flow Matching for Modeling Complex Systems
From Fourier to Neural ODEs: Flow Matching for Modeling Complex Systems
Xin Li
Jingdong Zhang
Qunxi Zhu
Chengli Zhao
Xue Zhang
Xiaojun Duan
Wei Lin
63
3
0
19 May 2024
Neural Controlled Differential Equations with Quantum Hidden Evolutions
Neural Controlled Differential Equations with Quantum Hidden Evolutions
Lingyi Yang
Zhen Shao
34
0
0
30 Apr 2024
Stable Neural Stochastic Differential Equations in Analyzing Irregular
  Time Series Data
Stable Neural Stochastic Differential Equations in Analyzing Irregular Time Series Data
YongKyung Oh
Dongyoung Lim
Sungil Kim
AI4TS
45
13
0
22 Feb 2024
Continuously Evolving Graph Neural Controlled Differential Equations for
  Traffic Forecasting
Continuously Evolving Graph Neural Controlled Differential Equations for Traffic Forecasting
Jiajia Wu
Ling Chen
AI4TS
31
2
0
26 Jan 2024
Operator-learning-inspired Modeling of Neural Ordinary Differential
  Equations
Operator-learning-inspired Modeling of Neural Ordinary Differential Equations
Woojin Cho
Seunghyeon Cho
Hyundong Jin
Jinsung Jeon
Kookjin Lee
Sanghyun Hong
Dongeun Lee
Jonghyun Choi
Noseong Park
AI4TS
AI4CE
23
2
0
16 Dec 2023
Faster Training of Neural ODEs Using Gauß-Legendre Quadrature
Faster Training of Neural ODEs Using Gauß-Legendre Quadrature
Alexander Norcliffe
M. Deisenroth
33
3
0
21 Aug 2023
Neural Delay Differential Equations: System Reconstruction and Image
  Classification
Neural Delay Differential Equations: System Reconstruction and Image Classification
Qunxi Zhu
Yao Guo
Wei Lin
25
32
0
11 Apr 2023
Locally Regularized Neural Differential Equations: Some Black Boxes Were
  Meant to Remain Closed!
Locally Regularized Neural Differential Equations: Some Black Boxes Were Meant to Remain Closed!
Avik Pal
Alan Edelman
Chris Rackauckas
42
3
0
03 Mar 2023
TIDE: Time Derivative Diffusion for Deep Learning on Graphs
TIDE: Time Derivative Diffusion for Deep Learning on Graphs
M. Behmanesh
Maximilian Krahn
M. Ovsjanikov
DiffM
GNN
29
9
0
05 Dec 2022
E2V-SDE: From Asynchronous Events to Fast and Continuous Video Reconstruction via Neural Stochastic Differential Equations
Jongwan Kim
Dongjin Lee
Byunggook Na
Seongsik Park
Jeonghee Jo
Sung-Hoon Yoon
42
0
0
15 Jun 2022
Standalone Neural ODEs with Sensitivity Analysis
Standalone Neural ODEs with Sensitivity Analysis
Rym Jaroudi
Lukáš Malý
Gabriel Eilertsen
B. Johansson
Jonas Unger
George Baravdish
23
0
0
27 May 2022
Path Development Network with Finite-dimensional Lie Group
  Representation
Path Development Network with Finite-dimensional Lie Group Representation
Han Lou
Siran Li
Hao Ni
23
7
0
02 Apr 2022
TO-FLOW: Efficient Continuous Normalizing Flows with Temporal
  Optimization adjoint with Moving Speed
TO-FLOW: Efficient Continuous Normalizing Flows with Temporal Optimization adjoint with Moving Speed
Shian Du
Yihong Luo
Wei Chen
Jian Xu
Delu Zeng
37
7
0
19 Mar 2022
Learning Stochastic Dynamics with Statistics-Informed Neural Network
Learning Stochastic Dynamics with Statistics-Informed Neural Network
Yuanran Zhu
Yunhao Tang
Changho Kim
19
18
0
24 Feb 2022
Characteristic Neural Ordinary Differential Equations
Characteristic Neural Ordinary Differential Equations
Xingzi Xu
Ali Hasan
Khalil Elkhalil
Jie Ding
Vahid Tarokh
BDL
34
3
0
25 Nov 2021
Constructing Neural Network-Based Models for Simulating Dynamical
  Systems
Constructing Neural Network-Based Models for Simulating Dynamical Systems
Christian Møldrup Legaard
Thomas Schranz
G. Schweiger
Ján Drgovna
Basak Falay
C. Gomes
Alexandros Iosifidis
M. Abkar
P. Larsen
PINN
AI4CE
33
93
0
02 Nov 2021
Federated Learning as a Mean-Field Game
Federated Learning as a Mean-Field Game
Arash Mehrjou
FedML
MLT
AI4CE
25
3
0
08 Jul 2021
Physics-Guided Deep Learning for Dynamical Systems: A Survey
Physics-Guided Deep Learning for Dynamical Systems: A Survey
Rui Wang
Rose Yu
AI4CE
PINN
46
65
0
02 Jul 2021
GRAND: Graph Neural Diffusion
GRAND: Graph Neural Diffusion
B. Chamberlain
J. Rowbottom
Maria I. Gorinova
Stefan Webb
Emanuele Rossi
M. Bronstein
GNN
54
254
0
21 Jun 2021
Efficient and Accurate Gradients for Neural SDEs
Efficient and Accurate Gradients for Neural SDEs
Patrick Kidger
James Foster
Xuechen Li
Terry Lyons
DiffM
29
61
0
27 May 2021
Opening the Blackbox: Accelerating Neural Differential Equations by
  Regularizing Internal Solver Heuristics
Opening the Blackbox: Accelerating Neural Differential Equations by Regularizing Internal Solver Heuristics
Avik Pal
Yingbo Ma
Viral B. Shah
Chris Rackauckas
28
36
0
09 May 2021
Deep limits and cut-off phenomena for neural networks
Deep limits and cut-off phenomena for neural networks
B. Avelin
A. Karlsson
AI4CE
43
2
0
21 Apr 2021
Meta-Solver for Neural Ordinary Differential Equations
Meta-Solver for Neural Ordinary Differential Equations
Julia Gusak
A. Katrutsa
Talgat Daulbaev
A. Cichocki
Ivan Oseledets
16
2
0
15 Mar 2021
Infinitely Deep Bayesian Neural Networks with Stochastic Differential
  Equations
Infinitely Deep Bayesian Neural Networks with Stochastic Differential Equations
Winnie Xu
Ricky T. Q. Chen
Xuechen Li
David Duvenaud
BDL
UQCV
27
46
0
12 Feb 2021
Self-Progressing Robust Training
Self-Progressing Robust Training
Minhao Cheng
Pin-Yu Chen
Sijia Liu
Shiyu Chang
Cho-Jui Hsieh
Payel Das
AAML
VLM
29
9
0
22 Dec 2020
Adversarial Machine Learning in Image Classification: A Survey Towards
  the Defender's Perspective
Adversarial Machine Learning in Image Classification: A Survey Towards the Defender's Perspective
G. R. Machado
Eugênio Silva
R. Goldschmidt
AAML
33
157
0
08 Sep 2020
A Differential Game Theoretic Neural Optimizer for Training Residual
  Networks
A Differential Game Theoretic Neural Optimizer for Training Residual Networks
Guan-Horng Liu
T. Chen
Evangelos A. Theodorou
24
2
0
17 Jul 2020
STEER: Simple Temporal Regularization For Neural ODEs
STEER: Simple Temporal Regularization For Neural ODEs
Arna Ghosh
Harkirat Singh Behl
Emilien Dupont
Philip Torr
Vinay P. Namboodiri
BDL
AI4TS
27
74
0
18 Jun 2020
Neural Controlled Differential Equations for Irregular Time Series
Neural Controlled Differential Equations for Irregular Time Series
Patrick Kidger
James Morrill
James Foster
Terry Lyons
AI4TS
29
451
0
18 May 2020
Stochasticity in Neural ODEs: An Empirical Study
Stochasticity in Neural ODEs: An Empirical Study
V. Oganesyan
Alexandra Volokhova
Dmitry Vetrov
BDL
30
20
0
22 Feb 2020
Stochastic Normalizing Flows
Stochastic Normalizing Flows
Hao Wu
Jonas Köhler
Frank Noé
57
176
0
16 Feb 2020
TrajectoryNet: A Dynamic Optimal Transport Network for Modeling Cellular
  Dynamics
TrajectoryNet: A Dynamic Optimal Transport Network for Modeling Cellular Dynamics
Alexander Tong
Jessie Huang
Guy Wolf
David van Dijk
Smita Krishnaswamy
29
163
0
09 Feb 2020
Scalable Gradients for Stochastic Differential Equations
Scalable Gradients for Stochastic Differential Equations
Xuechen Li
Ting-Kam Leonard Wong
Ricky T. Q. Chen
David Duvenaud
17
312
0
05 Jan 2020
On Robustness of Neural Ordinary Differential Equations
On Robustness of Neural Ordinary Differential Equations
Hanshu Yan
Jiawei Du
Vincent Y. F. Tan
Jiashi Feng
OOD
24
138
0
12 Oct 2019
Bayesian Learning-Based Adaptive Control for Safety Critical Systems
Bayesian Learning-Based Adaptive Control for Safety Critical Systems
David D. Fan
Jennifer Nguyen
Rohan Thakker
Nikhilesh Alatur
Ali-akbar Agha-mohammadi
Evangelos A. Theodorou
BDL
39
84
0
05 Oct 2019
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