Using Maximum Likelihood (or Prediction Error) methods to identify linear state space model is a prime technique. The likelihood function is a nonconvex function and care must be exercised in the numerical maximization. Here the focus will be on affine parameterizations which allow some special techniques and algorithms. Three approaches to formulate and perform the maximization are described in this contribution: (1) The standard and well known Gauss-Newton iterative search, (2) a scheme based on the EM (expectation-maximization) technique, which becomes especially simple in the affine parameterization case, and (3) a new approach based on lifting the problem to a higher dimension in the parameter space and introducing rank constraints.Tea...
Thesis (Ph.D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer ...
We propose a novel method for maximum likelihood-based parame-ter inference in nonlinear and/or non-...
In this paper we present new online algorithms to estimate static parameters in nonlinear non Gaussi...
This paper examines the problem of estimating linear time-invariant state-space system models. In pa...
This paper is concerned with the parameter estimation of a general class of nonlinear dynamic system...
This paper is concerned with the parameter estimation of a general class of nonlinear dynamic system...
Abstract—We consider parameter estimation in non-linear state space models by using expectation–maxi...
Writers develop a numerical procedure that facilitates efficient likelihood evaluation in applicatio...
This is the author accepted manuscript. The final version is available from the publisher via the DO...
Abstract: Maximum likelihood (ML) estimation using Newton’s method in nonlinear state space models (...
The primary contribution of this paper is an algorithm capable of identifying parameters in certain ...
This paper discusses the fitting of linear state space models to given multivariate time series in t...
This paper proposes an initialization approach for parameter estimation problems (PEPs) involving pa...
This paper presents a convex approach for parameter estimation problems (PEPs) involving parameter-a...
We introduce a state-space representation for vector autoregressive moving-average models that enabl...
Thesis (Ph.D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer ...
We propose a novel method for maximum likelihood-based parame-ter inference in nonlinear and/or non-...
In this paper we present new online algorithms to estimate static parameters in nonlinear non Gaussi...
This paper examines the problem of estimating linear time-invariant state-space system models. In pa...
This paper is concerned with the parameter estimation of a general class of nonlinear dynamic system...
This paper is concerned with the parameter estimation of a general class of nonlinear dynamic system...
Abstract—We consider parameter estimation in non-linear state space models by using expectation–maxi...
Writers develop a numerical procedure that facilitates efficient likelihood evaluation in applicatio...
This is the author accepted manuscript. The final version is available from the publisher via the DO...
Abstract: Maximum likelihood (ML) estimation using Newton’s method in nonlinear state space models (...
The primary contribution of this paper is an algorithm capable of identifying parameters in certain ...
This paper discusses the fitting of linear state space models to given multivariate time series in t...
This paper proposes an initialization approach for parameter estimation problems (PEPs) involving pa...
This paper presents a convex approach for parameter estimation problems (PEPs) involving parameter-a...
We introduce a state-space representation for vector autoregressive moving-average models that enabl...
Thesis (Ph.D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer ...
We propose a novel method for maximum likelihood-based parame-ter inference in nonlinear and/or non-...
In this paper we present new online algorithms to estimate static parameters in nonlinear non Gaussi...