Operator-Learning-Inspired Modeling of Neural Ordinary Differential Equations
Woojin Cho,
Seunghyeon Cho,
Hyundong Jin
et al.
Abstract: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-co… Show more
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