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Emilien Dupont; Arnaud Doucet; Yee Whye Teh

Abstract
We show that Neural Ordinary Differential Equations (ODEs) learn representations that preserve the topology of the input space and prove that this implies the existence of functions Neural ODEs cannot represent. To address these limitations, we introduce Augmented Neural ODEs which, in addition to being more expressive models, are empirically more stable, generalize better and have a lower computational cost than Neural ODEs.
Code Repositories
kfallah/NODE-Denoiser
pytorch
Mentioned in GitHub
mitmath/18S096SciML
Mentioned in GitHub
locuslab/monotone_op_net
pytorch
Mentioned in GitHub
Daniel-H-99/ANODE
pytorch
Mentioned in GitHub
mandubian/pytorch-neural-ode
pytorch
Mentioned in GitHub
EmilienDupont/augmented-neural-odes
Official
pytorch
Mentioned in GitHub
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| image-classification-on-cifar-10 | ANODE | Percentage correct: 60.6 |
| image-classification-on-mnist | Augmented Neural Ordinary Differential Equation | Accuracy: 99.63 Percentage error: 0.37 |
| image-classification-on-mnist | ANODE | Accuracy: 98.2 Percentage error: 1.8 |
| image-classification-on-svhn | ANODE | Percentage error: 16.5 |
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