Training dynamic models, such as neural ODEs, on long trajectories is a hard problem that requires using various tricks, such as trajectory splitting, to make model training work in practice. These methods are often heuristics with poor theoretical justifications, and require iterative manual tuning. We propose a principled multiple shooting technique for neural ODEs that splits the trajectories into manageable short segments, which are optimised in parallel, while ensuring probabilistic control on continuity over consecutive segments. We derive variational inference for our shooting-based latent neural ODE models and propose amortized encodings of irregularly sampled trajectories with a transformer-based recognition network with temporal a...
Trajectory optimization methods have achieved an exceptional level of performance on real-world robo...
Numerical simulations are ubiquitous in science and engineering. Machine learning for science invest...
Most machine learning methods are used as a black box for modelling. We may try to extract some know...
Recent machine learning advances have proposed black-box estimation of unknown continuous-time syste...
We introduce a novel grid-independent model for learning partial differential equations (PDEs) from ...
In data-driven modeling of spatiotemporal phenomena careful consideration often needs to be made in ...
Training Neural Ordinary Differential Equations (ODEs) is often computationally expensive. Indeed, c...
Continuous-depth neural networks can be viewed as deep limits of discrete neural networks whose dyna...
We present a framework and algorithms to learn controlled dynamics models using neural stochastic di...
Deep learning has seen great success training deep neural networks for complex prediction problems, ...
The time-delay neural network (TDNN) and the adaptive time-delay neural network (ATNN) are effective...
2017 Summer.Includes bibliographical references.This dissertation presents knowledge acquisition and...
We describe a stochastic, dynamical system capable of inference and learning in a probabilistic late...
Neural ordinary differential equations (NODEs) have been proven useful for learning non-linear dynam...
This paper studies the problem of forecasting general stochastic processes using an extension of the...
Trajectory optimization methods have achieved an exceptional level of performance on real-world robo...
Numerical simulations are ubiquitous in science and engineering. Machine learning for science invest...
Most machine learning methods are used as a black box for modelling. We may try to extract some know...
Recent machine learning advances have proposed black-box estimation of unknown continuous-time syste...
We introduce a novel grid-independent model for learning partial differential equations (PDEs) from ...
In data-driven modeling of spatiotemporal phenomena careful consideration often needs to be made in ...
Training Neural Ordinary Differential Equations (ODEs) is often computationally expensive. Indeed, c...
Continuous-depth neural networks can be viewed as deep limits of discrete neural networks whose dyna...
We present a framework and algorithms to learn controlled dynamics models using neural stochastic di...
Deep learning has seen great success training deep neural networks for complex prediction problems, ...
The time-delay neural network (TDNN) and the adaptive time-delay neural network (ATNN) are effective...
2017 Summer.Includes bibliographical references.This dissertation presents knowledge acquisition and...
We describe a stochastic, dynamical system capable of inference and learning in a probabilistic late...
Neural ordinary differential equations (NODEs) have been proven useful for learning non-linear dynam...
This paper studies the problem of forecasting general stochastic processes using an extension of the...
Trajectory optimization methods have achieved an exceptional level of performance on real-world robo...
Numerical simulations are ubiquitous in science and engineering. Machine learning for science invest...
Most machine learning methods are used as a black box for modelling. We may try to extract some know...