Reconstructing continuous signals from discrete time-points is a challenging inverse problem encountered in many scientific and engineering applications. For oscillatory signals classical results due to Nyquist set the limit below which it becomes impossible to reliably reconstruct the oscillation dynamics. Here we revisit this problem for vector-valued outputs and apply Bayesian non-parametric approaches in order to solve the function estimation problem. The main aim of the current paper is to map how we can use of correlations among different outputs to reconstruct signals at a sampling rate that lies below the Nyquist rate. We show that it is possible to use multiple-output Gaussian processes to capture dependences between outputs which ...
A stochastic interpretation of Tikhonov regularization has been recently proposed to attack some ope...
System identification is of special interest in science and engineering. This article is concerned w...
Bayesian learning techniques have recently garnered significant attention in the system identificati...
Reconstructing continuous signals from discrete time-points is a challenging inverse problem encount...
A Bayesian framework for parameter inference in non-stationary, nonlinear, stochastic, dynamical sys...
An extended Bayesian inference framework is presented, aiming to infer time-varying parameters in no...
We develop a method for reconstructing regulatory interconnection networks between variables evolvin...
A common task in experimental sciences is to fit mathematical models to real-world measurements to im...
We present a Bayesian framework for parameter inference in noisy, non-stationary, nonlinear, dynamic...
Bayesian estimation can be used to estimate the state of dynamical systems, but its applicability is...
We propose a principled algorithm for robust Bayesian filtering and smoothing in nonlinear stochasti...
We introduce state-space models where the functionals of the observational and the evolu-tionary equ...
The analysis of time series data is important in fields as disparate as the social sciences, biology...
The use of statistical complexity metrics has yielded a number of successful methodologies to differ...
A technique of reconstruction of both unknown state and unknown vector-field of stochastic nonlinear...
A stochastic interpretation of Tikhonov regularization has been recently proposed to attack some ope...
System identification is of special interest in science and engineering. This article is concerned w...
Bayesian learning techniques have recently garnered significant attention in the system identificati...
Reconstructing continuous signals from discrete time-points is a challenging inverse problem encount...
A Bayesian framework for parameter inference in non-stationary, nonlinear, stochastic, dynamical sys...
An extended Bayesian inference framework is presented, aiming to infer time-varying parameters in no...
We develop a method for reconstructing regulatory interconnection networks between variables evolvin...
A common task in experimental sciences is to fit mathematical models to real-world measurements to im...
We present a Bayesian framework for parameter inference in noisy, non-stationary, nonlinear, dynamic...
Bayesian estimation can be used to estimate the state of dynamical systems, but its applicability is...
We propose a principled algorithm for robust Bayesian filtering and smoothing in nonlinear stochasti...
We introduce state-space models where the functionals of the observational and the evolu-tionary equ...
The analysis of time series data is important in fields as disparate as the social sciences, biology...
The use of statistical complexity metrics has yielded a number of successful methodologies to differ...
A technique of reconstruction of both unknown state and unknown vector-field of stochastic nonlinear...
A stochastic interpretation of Tikhonov regularization has been recently proposed to attack some ope...
System identification is of special interest in science and engineering. This article is concerned w...
Bayesian learning techniques have recently garnered significant attention in the system identificati...