© ICLR 2016: San Juan, Puerto Rico. All Rights Reserved. We define Recurrent Gaussian Processes (RGP) models, a general family of Bayesian nonparametric models with recurrent GP priors which are able to learn dynamical patterns from sequential data. Similar to Recurrent Neural Networks (RNNs), RGPs can have different formulations for their internal states, distinct inference methods and be extended with deep structures. In such context, we propose a novel deep RGP model whose autoregressive states are latent, thereby performing representation and dynamical learning simultaneously. To fully exploit the Bayesian nature of the RGP model we develop the Recurrent Variational Bayes (REVARB) framework, which enables efficient inference and strong ...
It has been shown that spatiotemporal dynamics of neuronal activity can be well described using stat...
Recurrent State-space models (RSSMs) are highly expressive models for learning patterns in time seri...
The analysis of time series data is important for many fields, ranging from meteorology and engineer...
We define Recurrent Gaussian Processes (RGP) models, a general family of Bayesian nonparametric mode...
The Gaussian process state space model (GPSSM) is a non-linear dynamical system, where unknown trans...
The study of dynamical systems is widespread across several areas of knowledge. Sequential data is g...
Recent advances in the estimation of deep directed graphical models and recur-rent networks let us c...
Despite the recent popularity of deep generative state space models, few comparisons have been made ...
The analysis of time series data is important in fields as disparate as the social sciences, biology...
Time series forecasting based on deep architectures has been gaining popularity in recent years due ...
We identify a new variational inference scheme for dynamical systems whose transition function is mo...
This thesis deals with the methodology of building data driven models of nonlinear systems through ...
Recurrent neural networks (RNNs) are widely used in computational neuroscience and machine learn-ing...
Modern deep neural networks are being widelyexploited to solve challenging learning tasks, inc...
This paper introduces Gaussian Process Dynamical Models (GPDM) for nonlinear time series analysis. A...
It has been shown that spatiotemporal dynamics of neuronal activity can be well described using stat...
Recurrent State-space models (RSSMs) are highly expressive models for learning patterns in time seri...
The analysis of time series data is important for many fields, ranging from meteorology and engineer...
We define Recurrent Gaussian Processes (RGP) models, a general family of Bayesian nonparametric mode...
The Gaussian process state space model (GPSSM) is a non-linear dynamical system, where unknown trans...
The study of dynamical systems is widespread across several areas of knowledge. Sequential data is g...
Recent advances in the estimation of deep directed graphical models and recur-rent networks let us c...
Despite the recent popularity of deep generative state space models, few comparisons have been made ...
The analysis of time series data is important in fields as disparate as the social sciences, biology...
Time series forecasting based on deep architectures has been gaining popularity in recent years due ...
We identify a new variational inference scheme for dynamical systems whose transition function is mo...
This thesis deals with the methodology of building data driven models of nonlinear systems through ...
Recurrent neural networks (RNNs) are widely used in computational neuroscience and machine learn-ing...
Modern deep neural networks are being widelyexploited to solve challenging learning tasks, inc...
This paper introduces Gaussian Process Dynamical Models (GPDM) for nonlinear time series analysis. A...
It has been shown that spatiotemporal dynamics of neuronal activity can be well described using stat...
Recurrent State-space models (RSSMs) are highly expressive models for learning patterns in time seri...
The analysis of time series data is important for many fields, ranging from meteorology and engineer...