State-space models have been successfully used for more than fifty years in different areas of science and engineering. We present a procedure for efficient variational Bayesian learning of nonlinear state-space models based on sparse Gaussian processes. The result of learning is a tractable posterior over nonlinear dynamical systems. In comparison to conventional parametric models, we offer the possibility to straightforwardly trade off model capacity and computational cost whilst avoiding overfitting. Our main algorithm uses a hybrid inference approach combining variational Bayes and sequential Monte Carlo. We also present stochastic variational inference and online learning approaches for fast learning with long time series
State-space inference and learning with Gaussian processes (GPs) is an unsolved problem. We propose ...
High dimensional time series are endemic in applications of machine learning such as robotics (senso...
Gaussian processes (GPs) are widely used in the Bayesian approach to supervised learning. Their abil...
State-space models have been successfully used for more than fifty years in differ-ent areas of scie...
Gaussian processes allow for flexible specification of prior assumptions of unknown dynamics in stat...
State-space models are successfully used in many areas of science, engineering and economics to mode...
State-space models are successfully used in many areas of science, engineering and economics to mode...
The analysis of time series data is important in fields as disparate as the social sciences, biology...
We describe an ecient variational Bayesian approximation scheme for model structure selec- tion in L...
Abstract. In this paper the variational Bayesian method for learning nonlinear state-space models in...
Variational inference techniques based on inducing variables provide an elegant framework for scalab...
The Gaussian process latent variable model (GP-LVM) provides a flexible approach for non-linear dime...
Recent machine learning advances have proposed black-box estimation of unknown continuous-time syste...
Dynamical systems present in the real world are often well represented using stochastic differential...
State-space inference and learning with Gaussian processes (GPs) is an unsolved problem. We propose ...
State-space inference and learning with Gaussian processes (GPs) is an unsolved problem. We propose ...
High dimensional time series are endemic in applications of machine learning such as robotics (senso...
Gaussian processes (GPs) are widely used in the Bayesian approach to supervised learning. Their abil...
State-space models have been successfully used for more than fifty years in differ-ent areas of scie...
Gaussian processes allow for flexible specification of prior assumptions of unknown dynamics in stat...
State-space models are successfully used in many areas of science, engineering and economics to mode...
State-space models are successfully used in many areas of science, engineering and economics to mode...
The analysis of time series data is important in fields as disparate as the social sciences, biology...
We describe an ecient variational Bayesian approximation scheme for model structure selec- tion in L...
Abstract. In this paper the variational Bayesian method for learning nonlinear state-space models in...
Variational inference techniques based on inducing variables provide an elegant framework for scalab...
The Gaussian process latent variable model (GP-LVM) provides a flexible approach for non-linear dime...
Recent machine learning advances have proposed black-box estimation of unknown continuous-time syste...
Dynamical systems present in the real world are often well represented using stochastic differential...
State-space inference and learning with Gaussian processes (GPs) is an unsolved problem. We propose ...
State-space inference and learning with Gaussian processes (GPs) is an unsolved problem. We propose ...
High dimensional time series are endemic in applications of machine learning such as robotics (senso...
Gaussian processes (GPs) are widely used in the Bayesian approach to supervised learning. Their abil...