Established recurrent neural networks are well-suited to solve a wide variety of prediction tasks involving discrete sequences. However, they do not perform as well in the task of dynamical system identification, when dealing with observations from continuous variables that are unevenly sampled in time, for example due to missing observations. We show how such neural sequence models can be adapted to deal with variable step sizes in a natural way. In particular, we introduce a ‘time-aware’ and stationary extension of existing models (including the Gated Recurrent Unit) that allows them to deal with unevenly sampled system observations by adapting to the observation times, while facilitating higher-order temporal behavior. We discuss the pro...
This work provides a framework for the approximation of a dynamic system of the form x˙=f(x)+g(x)u b...
International audienceSequence metric learning is becoming a widely adopted approach for various app...
This paper discusses memory neuron networks as models for identification and adaptive control of non...
Established recurrent neural networks are well-suited to solve a wide variety of prediction tasks in...
Established recurrent neural networks are well-suited to solve a wide variety of prediction tasks in...
Traditional machine learning sequence models, such as RNN and LSTM, can solve sequential data proble...
Despite the recent popularity of deep generative state space models, few comparisons have been made ...
Recent experiments have revealed a hierarchy of time scales in the visual cortex, where different st...
Methods for model identification are crucial in many fields, such as adaptive signal processing, pat...
Sequence processing involves several tasks such as clustering, classification, prediction, and trans...
© 2021, The Author(s), under exclusive licence to Springer-Verlag London Ltd., part of Springer Natu...
In this chapter, we present three different recurrent neural network architectures that we employ fo...
Recurrent Neural Networks (RNNs) have shown great success in sequence-to-sequence processing due to ...
We investigate the predictive power of recurrent neural networks for oscillatory systems not only on...
Recent advances in nonlinear time-series prediction demonstrated the ability of recurrent neural net...
This work provides a framework for the approximation of a dynamic system of the form x˙=f(x)+g(x)u b...
International audienceSequence metric learning is becoming a widely adopted approach for various app...
This paper discusses memory neuron networks as models for identification and adaptive control of non...
Established recurrent neural networks are well-suited to solve a wide variety of prediction tasks in...
Established recurrent neural networks are well-suited to solve a wide variety of prediction tasks in...
Traditional machine learning sequence models, such as RNN and LSTM, can solve sequential data proble...
Despite the recent popularity of deep generative state space models, few comparisons have been made ...
Recent experiments have revealed a hierarchy of time scales in the visual cortex, where different st...
Methods for model identification are crucial in many fields, such as adaptive signal processing, pat...
Sequence processing involves several tasks such as clustering, classification, prediction, and trans...
© 2021, The Author(s), under exclusive licence to Springer-Verlag London Ltd., part of Springer Natu...
In this chapter, we present three different recurrent neural network architectures that we employ fo...
Recurrent Neural Networks (RNNs) have shown great success in sequence-to-sequence processing due to ...
We investigate the predictive power of recurrent neural networks for oscillatory systems not only on...
Recent advances in nonlinear time-series prediction demonstrated the ability of recurrent neural net...
This work provides a framework for the approximation of a dynamic system of the form x˙=f(x)+g(x)u b...
International audienceSequence metric learning is becoming a widely adopted approach for various app...
This paper discusses memory neuron networks as models for identification and adaptive control of non...