A new technique for the latent state estimation of a wide class of nonlinear time series models is proposed. In particular, we develop a partially linearized sigma point filter in which random samples of possible state values are generated at the prediction step using an exact moment matching algorithm and then a linear programming-based procedure is used in the update step of the state estimation. The effectiveness of the new ¯ltering procedure is assessed via a simulation example that deals with a highly nonlinear, multivariate time series representing an interest rate process
This paper is concerned with Gaussian approximations to the posterior probability density function (...
This thesis deals with estimation of states and parameters in nonlinear and non-Gaussian dynamic sys...
In this paper we take three well known Sigma Point Filters, namely the Unscented Kalman Filter, the...
AbstractA new technique for the latent state estimation of a wide class of nonlinear time series mod...
We consider the problem of optimal state estimation for a wide class of nonlinear time series models...
The problem of estimating latent or unobserved states of a dynamical system from observed data is st...
This thesis was submitted for the degree of Doctor of Philosophy and awarded by Brunel University.Tw...
In this paper, a new method termed as new sigma point Kalman filter (NSKF), is proposed for generat...
This paper is concerned with sigma-point methods for filtering in nonlinear systems, where the proce...
We propose a deterministic recursive algorithm for approximate Bayesian filtering. The proposed filt...
In principle, general approaches to optimal nonlinear filtering can be described in a unified way fr...
This thesis is on filtering in state space models. First, we examine approximate Kalman filters for ...
ABSTRACT: In this paper a new Adaptive Unscented Kalman Filter (AUKF) is proposed and applied for th...
In this paper we take three well known Sigma Point Filters, namely the Unscented Kalman Filter, the ...
In applied microeconometric panel data analyses, time-constant random effects and first-order Markov...
This paper is concerned with Gaussian approximations to the posterior probability density function (...
This thesis deals with estimation of states and parameters in nonlinear and non-Gaussian dynamic sys...
In this paper we take three well known Sigma Point Filters, namely the Unscented Kalman Filter, the...
AbstractA new technique for the latent state estimation of a wide class of nonlinear time series mod...
We consider the problem of optimal state estimation for a wide class of nonlinear time series models...
The problem of estimating latent or unobserved states of a dynamical system from observed data is st...
This thesis was submitted for the degree of Doctor of Philosophy and awarded by Brunel University.Tw...
In this paper, a new method termed as new sigma point Kalman filter (NSKF), is proposed for generat...
This paper is concerned with sigma-point methods for filtering in nonlinear systems, where the proce...
We propose a deterministic recursive algorithm for approximate Bayesian filtering. The proposed filt...
In principle, general approaches to optimal nonlinear filtering can be described in a unified way fr...
This thesis is on filtering in state space models. First, we examine approximate Kalman filters for ...
ABSTRACT: In this paper a new Adaptive Unscented Kalman Filter (AUKF) is proposed and applied for th...
In this paper we take three well known Sigma Point Filters, namely the Unscented Kalman Filter, the ...
In applied microeconometric panel data analyses, time-constant random effects and first-order Markov...
This paper is concerned with Gaussian approximations to the posterior probability density function (...
This thesis deals with estimation of states and parameters in nonlinear and non-Gaussian dynamic sys...
In this paper we take three well known Sigma Point Filters, namely the Unscented Kalman Filter, the...