The problem of how to reconstruct the parameters of a stochastic nonlinear dynamical system when they are time-varying is considered in the context of online decoding of physiological information from neuron signaling activity. To model the spiking of neurons, a set of FitzHugh-Nagumo FHN oscillators is used. It is assumed that only a fast dynamical variable can be detected for each neuron, and that the monitored signals are mixed by an unknown measurement matrix. The Bayesian framework introduced in paper I immediately preceding this paper is applied both for reconstruction of the model parameters and elements of the measurement matrix, and for inference of the time-varying parameters in the nonstationary system. It is shown that the propo...
One of the central goals of computational neuroscience is to understand the dynamics of single neuro...
Neurons interact through their membrane potential that generally has a complex time evolution due to...
The usefulness of the information extracted from biomedical data relies heavily on the underlying th...
The problem of how to reconstruct the parameters of a stochastic nonlinear dynamical system when the...
The problem of how to reconstruct the parameters of a stochastic nonlinear dynamical system when the...
A general Bayesian framework is introduced for the inference of time-varying parameters in nonstatio...
An extended Bayesian inference framework is presented, aiming to infer time-varying parameters in no...
A Bayesian framework for parameter inference in non-stationary, nonlinear, stochastic, dynamical sys...
We present a Bayesian framework for parameter inference in noisy, non-stationary, nonlinear, dynamic...
The computational task of continuous-time state estimation, nonlinear filtering and identification, ...
The computational task of continuous-time state estimation, nonlinear filtering and identification, ...
A new method of inferencing of coupled stochastic nonlinear oscillators is described. The technique ...
Neural population activity often exhibits rich variability. This variability can arise from single-n...
This paper illustrates novel methods for nonstationary time series modeling along with their applica...
We suggest a fresh approach to the modeling of the human cardiovascular system. Taking advantage of ...
One of the central goals of computational neuroscience is to understand the dynamics of single neuro...
Neurons interact through their membrane potential that generally has a complex time evolution due to...
The usefulness of the information extracted from biomedical data relies heavily on the underlying th...
The problem of how to reconstruct the parameters of a stochastic nonlinear dynamical system when the...
The problem of how to reconstruct the parameters of a stochastic nonlinear dynamical system when the...
A general Bayesian framework is introduced for the inference of time-varying parameters in nonstatio...
An extended Bayesian inference framework is presented, aiming to infer time-varying parameters in no...
A Bayesian framework for parameter inference in non-stationary, nonlinear, stochastic, dynamical sys...
We present a Bayesian framework for parameter inference in noisy, non-stationary, nonlinear, dynamic...
The computational task of continuous-time state estimation, nonlinear filtering and identification, ...
The computational task of continuous-time state estimation, nonlinear filtering and identification, ...
A new method of inferencing of coupled stochastic nonlinear oscillators is described. The technique ...
Neural population activity often exhibits rich variability. This variability can arise from single-n...
This paper illustrates novel methods for nonstationary time series modeling along with their applica...
We suggest a fresh approach to the modeling of the human cardiovascular system. Taking advantage of ...
One of the central goals of computational neuroscience is to understand the dynamics of single neuro...
Neurons interact through their membrane potential that generally has a complex time evolution due to...
The usefulness of the information extracted from biomedical data relies heavily on the underlying th...