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Liquid Time-constant Networks

About

We introduce a new class of time-continuous recurrent neural network models. Instead of declaring a learning system's dynamics by implicit nonlinearities, we construct networks of linear first-order dynamical systems modulated via nonlinear interlinked gates. The resulting models represent dynamical systems with varying (i.e., liquid) time-constants coupled to their hidden state, with outputs being computed by numerical differential equation solvers. These neural networks exhibit stable and bounded behavior, yield superior expressivity within the family of neural ordinary differential equations, and give rise to improved performance on time-series prediction tasks. To demonstrate these properties, we first take a theoretical approach to find bounds over their dynamics and compute their expressive power by the trajectory length measure in latent trajectory space. We then conduct a series of time-series prediction experiments to manifest the approximation capability of Liquid Time-Constant Networks (LTCs) compared to classical and modern RNNs. Code and data are available at https://github.com/raminmh/liquid_time_constant_networks

Ramin Hasani, Mathias Lechner, Alexander Amini, Daniela Rus, Radu Grosu• 2020

Related benchmarks

TaskDatasetResultRank
Sentiment AnalysisIMDB (test)
Accuracy61.8
248
Multivariate ForecastingPEMS03 (test)--
43
Degradation EstimationXJTU-SY
MSE36.83
33
Degradation EstimationPRONOSTIA
MSE48.14
33
Irregular Time Series ClassificationE-MNIST
Accuracy95.25
33
Degradation EstimationHUST
MSE61.82
33
Irregular Time Series ClassificationPAR
Accuracy88.12
33
Lane-Keeping Trajectory PredictionUdacity Simulator
MSE0.0245
33
Lane-Keeping Action ClassificationOpenAI CarRacing
Accuracy76.37
33
Per time-step regressionWalker2D
Squared Error0.662
19
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