Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

"Hey, that's not an ODE": Faster ODE Adjoints via Seminorms

About

Neural differential equations may be trained by backpropagating gradients via the adjoint method, which is another differential equation typically solved using an adaptive-step-size numerical differential equation solver. A proposed step is accepted if its error, \emph{relative to some norm}, is sufficiently small; else it is rejected, the step is shrunk, and the process is repeated. Here, we demonstrate that the particular structure of the adjoint equations makes the usual choices of norm (such as $L^2$) unnecessarily stringent. By replacing it with a more appropriate (semi)norm, fewer steps are unnecessarily rejected and the backpropagation is made faster. This requires only minor code modifications. Experiments on a wide range of tasks -- including time series, generative modeling, and physical control -- demonstrate a median improvement of 40% fewer function evaluations. On some problems we see as much as 62% fewer function evaluations, so that the overall training time is roughly halved.

Patrick Kidger, Ricky T. Q. Chen, Terry Lyons• 2020

Related benchmarks

TaskDatasetResultRank
Generative ModelingCIFAR-10
BPD3.35
46
Audio ClassificationSpeech Commands (test)
Accuracy92.9
43
Generative ModelingMNIST
BPD0.96
10
Showing 3 of 3 rows

Other info

Follow for update