Operator-Learning-Inspired Modeling of Neural Ordinary Differential Equations

被引:0
|
作者
Cho, Woojin [1 ]
Cho, Seunghyeon [1 ]
Jin, Hyundong [1 ]
Jeon, Jinsung [1 ]
Lee, Kookjin [2 ]
Hong, Sanghyun [3 ]
Lee, Dongeun [4 ]
Choi, Jonghyun [1 ]
Park, Noseong [1 ]
机构
[1] Yonsei Univ, Seoul, South Korea
[2] Arizona State Univ, Tempe, AZ USA
[3] Oregon State Univ, Corvallis, OR USA
[4] Texas A&M Univ, Commerce, College Stn, TX USA
关键词
D O I
暂无
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Neural ordinary differential equations (NODEs), one of the most influential works of the differential equation-based deep learning, are to continuously generalize residual networks and opened a new field. They are currently utilized for various downstream tasks, e.g., image classification, time series classification, image generation, etc. Its key part is how to model the time-derivative of the hidden state, denoted dh(t)/dt. People have habitually used conventional neural network architectures, e.g., fully-connected layers followed by non-linear activations. In this paper, however, we present a neural operator-based method to define the time-derivative term. Neural operators were initially proposed to model the differential operator of partial differential equations (PDEs). Since the time-derivative of NODEs can be understood as a special type of the differential operator, our proposed method, called branched Fourier neural operator (BFNO), makes sense. In our experiments with general downstream tasks, our method significantly outperforms existing methods.
引用
收藏
页码:11543 / 11551
页数:9
相关论文
共 50 条
  • [1] Neuroscience inspired neural operator for partial differential equations
    Garg, Shailesh
    Chakraborty, Souvik
    JOURNAL OF COMPUTATIONAL PHYSICS, 2024, 515
  • [2] Modeling Trajectories with Neural Ordinary Differential Equations
    Liang, Yuxuan
    Ouyang, Kun
    Yan, Hanshu
    Wang, Yiwei
    Tong, Zekun
    Zimmermann, Roger
    PROCEEDINGS OF THE THIRTIETH INTERNATIONAL JOINT CONFERENCE ON ARTIFICIAL INTELLIGENCE, IJCAI 2021, 2021, : 1498 - 1504
  • [3] Neural Ordinary Differential Equations-based Explainable Deep Learning for Process Modeling
    Wartmann, Michael R.
    Ydstie, B. Erik
    30TH EUROPEAN SYMPOSIUM ON COMPUTER AIDED PROCESS ENGINEERING, PTS A-C, 2020, 48 : 1963 - 1968
  • [4] Incremental data modeling based on neural ordinary differential equations
    Chen, Zhang
    Bian, Hanlin
    Zhu, Wei
    COMPLEX & INTELLIGENT SYSTEMS, 2025, 11 (03)
  • [5] Neural Ordinary Differential Equations
    Chen, Ricky T. Q.
    Rubanova, Yulia
    Bettencourt, Jesse
    Duvenaud, David
    ADVANCES IN NEURAL INFORMATION PROCESSING SYSTEMS 31 (NIPS 2018), 2018, 31
  • [6] Neural modal ordinary differential equations: Integrating physics-based modeling with neural ordinary differential equations for modeling high-dimensional monitored structures
    Lai, Zhilu
    Liu, Wei
    Jian, Xudong
    Bacsa, Kiran
    Sun, Limin
    Chatzi, Eleni
    DATA-CENTRIC ENGINEERING, 2022, 3 (01):
  • [7] A Forward Learning Algorithm for Neural Memory Ordinary Differential Equations
    Xu, Xiuyuan
    Luo, Haiying
    Yi, Zhang
    Zhang, Haixian
    INTERNATIONAL JOURNAL OF NEURAL SYSTEMS, 2024, 34 (09)
  • [8] Learning quantum dynamics with latent neural ordinary differential equations
    Choi, Matthew
    Flam-Shepherd, Daniel
    Kyaw, Thi Ha
    Aspuru-Guzik, Alan
    PHYSICAL REVIEW A, 2022, 105 (04)
  • [9] Application to ordinary differential equations with operator coefficients
    Kozlov, V
    Maz'ya, V
    THEORY OF A HIGHER-ORDER STURM-LIOUVILLE EQUATION, 1997, 1659 : 127 - 136
  • [10] Modeling of DC-DC Converters with Neural Ordinary Differential Equations
    Ge, Hanchen
    Yuan, Canjun
    Liang, Yaofeng
    Lei, Jinpeng
    Huang, Zhicong
    2024 IEEE INTERNATIONAL SYMPOSIUM ON CIRCUITS AND SYSTEMS, ISCAS 2024, 2024,