We introduce a new statistical model for time series that iteratively segments data into regimes with approximately linear dynamics and learns the parameters of each of these linear regimes. This model combines and generalizes two of the most widely used stochastic time-series models— hidden Markov models and linear dynamical systems—and is closely related to models that are widely used in the control and econometrics literatures. It can also be derived by extending the mixture of experts neural network (Jacobs, Jordan, Nowlan, & Hinton, 1991) to its fully dynamical version, in which both expert and gating networks are recurrent. Inferring the posterior probabilities of the hidden states of this model is computationally intractable, an...
Linear Gaussian State-Space Models are widely used and a Bayesian treatment of parameters is therefo...
Inference, prediction, and control of complex dynamical systems from time series is important in man...
Variational approximations are becoming a widespread tool for Bayesian learning of graphical models....
We introduce a statistical model for non-linear time series which iteratively segments the data into...
Abstract. In this paper the variational Bayesian method for learning nonlinear state-space models in...
An important general model for discrete-time signal processing is the switching state space (SSS) mo...
It has been shown that spatiotemporal dynamics of neuronal activity can be well described using stat...
Switching dynamical systems provide a powerful, interpretable modeling framework for inference in ti...
We describe an ecient variational Bayesian approximation scheme for model structure selec- tion in L...
International audienceModeling the temporal behavior of data is of primordial importance in many sci...
The deficiencies of stationary models applied to financial time series are well documented. A specia...
This paper aims to present a structured variational inference algorithm for switching linear dynamic...
State-space models have been successfully used for more than fifty years in different areas of scien...
State-space models have been successfully used for more than fifty years in differ-ent areas of scie...
We present a variational method for online state estimation and parameter learning in state-space mo...
Linear Gaussian State-Space Models are widely used and a Bayesian treatment of parameters is therefo...
Inference, prediction, and control of complex dynamical systems from time series is important in man...
Variational approximations are becoming a widespread tool for Bayesian learning of graphical models....
We introduce a statistical model for non-linear time series which iteratively segments the data into...
Abstract. In this paper the variational Bayesian method for learning nonlinear state-space models in...
An important general model for discrete-time signal processing is the switching state space (SSS) mo...
It has been shown that spatiotemporal dynamics of neuronal activity can be well described using stat...
Switching dynamical systems provide a powerful, interpretable modeling framework for inference in ti...
We describe an ecient variational Bayesian approximation scheme for model structure selec- tion in L...
International audienceModeling the temporal behavior of data is of primordial importance in many sci...
The deficiencies of stationary models applied to financial time series are well documented. A specia...
This paper aims to present a structured variational inference algorithm for switching linear dynamic...
State-space models have been successfully used for more than fifty years in different areas of scien...
State-space models have been successfully used for more than fifty years in differ-ent areas of scie...
We present a variational method for online state estimation and parameter learning in state-space mo...
Linear Gaussian State-Space Models are widely used and a Bayesian treatment of parameters is therefo...
Inference, prediction, and control of complex dynamical systems from time series is important in man...
Variational approximations are becoming a widespread tool for Bayesian learning of graphical models....