The Gaussian process latent variable model (GP-LVM) provides a flexible approach for non-linear dimensionality reduction that has been widely applied. However, the current approach for training GP-LVMs is based on maximum likelihood, where the latent projection variables are maximised over rather than integrated out. In this paper we present a Bayesian method for training GP-LVMs by introducing a non-standard variational inference framework that allows to approximately integrate out the latent variables and subsequently train a GP-LVM by maximising an analytic lower bound on the exact marginal likelihood. We apply this method for learning a GP-LVM from i.i.d. observations and for learning non-linear dynamical systems where the observations ...
The analysis of time series data is important in fields as disparate as the social sciences, biology...
Gaussian processes (GPs) are a powerful tool for probabilistic inference over functions. They have b...
We describe an ecient variational Bayesian approximation scheme for model structure selec- tion in L...
The Gaussian process latent variable model (GP-LVM) provides a flexible approach for non-linear dime...
We introduce a variational inference framework for training the Gaussian process latent variable mod...
High dimensional time series are endemic in applications of machine learning such as robotics (senso...
A Bayesian inference framework for supervised Gaussian process latent variable models is introduced....
Variational inference techniques based on inducing variables provide an elegant framework for scalab...
Gaussian processes (GPs) are widely used in the Bayesian approach to supervised learning. Their abil...
Gaussian process latent variable models (GPLVM) are a flexible and non-linear approach to dimensiona...
Gaussian Process Latent Variable Model (GPLVM) is a flexible framework to handle uncertain inputs in...
We introduce stochastic variational inference for Gaussian process models. This enables the applicat...
State-space models have been successfully used for more than fifty years in different areas of scien...
We identify a new variational inference scheme for dynamical systems whose transition function is mo...
State-space models have been successfully used for more than fifty years in differ-ent areas of scie...
The analysis of time series data is important in fields as disparate as the social sciences, biology...
Gaussian processes (GPs) are a powerful tool for probabilistic inference over functions. They have b...
We describe an ecient variational Bayesian approximation scheme for model structure selec- tion in L...
The Gaussian process latent variable model (GP-LVM) provides a flexible approach for non-linear dime...
We introduce a variational inference framework for training the Gaussian process latent variable mod...
High dimensional time series are endemic in applications of machine learning such as robotics (senso...
A Bayesian inference framework for supervised Gaussian process latent variable models is introduced....
Variational inference techniques based on inducing variables provide an elegant framework for scalab...
Gaussian processes (GPs) are widely used in the Bayesian approach to supervised learning. Their abil...
Gaussian process latent variable models (GPLVM) are a flexible and non-linear approach to dimensiona...
Gaussian Process Latent Variable Model (GPLVM) is a flexible framework to handle uncertain inputs in...
We introduce stochastic variational inference for Gaussian process models. This enables the applicat...
State-space models have been successfully used for more than fifty years in different areas of scien...
We identify a new variational inference scheme for dynamical systems whose transition function is mo...
State-space models have been successfully used for more than fifty years in differ-ent areas of scie...
The analysis of time series data is important in fields as disparate as the social sciences, biology...
Gaussian processes (GPs) are a powerful tool for probabilistic inference over functions. They have b...
We describe an ecient variational Bayesian approximation scheme for model structure selec- tion in L...