AbstractIn this paper we consider the estimation problem in a continuous time linear model. We establish that, under certain covariance structure of the process, if the best linear unbiased estimator for the expectation of the process is sufficient then the process involved has a Gaussian distribution. In particular, this implies that, under some conditions, the linear sufficiency and ordinary sufficiency properties are equivalent if and only if the distribution of the process is Gaussian
It is shown that, for discrete-time processes, both the causal minimum variance estimate of an arbit...
We present a novel approach to inference in conditionally Gaussian continuous time stochastic proces...
The theory of linear filtering of stochastic processes provides continuous time analogues of finite-...
AbstractIn this paper we consider the estimation problem in a continuous time linear model. We estab...
In this paper, we study linear completeness in a continuous time linear model. We give a characteriz...
AbstractThis paper considers the problem of estimation in a linear model when a stochastic process i...
AbstractIn this paper we consider a general linear model in a continuous time. We propose a decompos...
We consider covariance parameter estimation for a Gaussian process under inequality constraints (bou...
The estimation of parameters in a continuous time Gaussian stationary process with zero mean and rat...
It is well known, that under the condition LAN and some more regularity conditions, the process of l...
AbstractIt is well known, that under the condition LAN and some more regularity conditions, the proc...
AbstractWe consider an estimation problem with observations from a Gaussian process. The problem ari...
We consider an estimation problem with observations from a Gaussian process. The problem arises from...
AbstractWe establish contiguity of families of probability measures indexed by T, as T → ∞, for clas...
AbstractLet {X(t): t ∈ [a, b]} be a Gaussian process with mean μ ∈ L2[a, b] and continuous covarianc...
It is shown that, for discrete-time processes, both the causal minimum variance estimate of an arbit...
We present a novel approach to inference in conditionally Gaussian continuous time stochastic proces...
The theory of linear filtering of stochastic processes provides continuous time analogues of finite-...
AbstractIn this paper we consider the estimation problem in a continuous time linear model. We estab...
In this paper, we study linear completeness in a continuous time linear model. We give a characteriz...
AbstractThis paper considers the problem of estimation in a linear model when a stochastic process i...
AbstractIn this paper we consider a general linear model in a continuous time. We propose a decompos...
We consider covariance parameter estimation for a Gaussian process under inequality constraints (bou...
The estimation of parameters in a continuous time Gaussian stationary process with zero mean and rat...
It is well known, that under the condition LAN and some more regularity conditions, the process of l...
AbstractIt is well known, that under the condition LAN and some more regularity conditions, the proc...
AbstractWe consider an estimation problem with observations from a Gaussian process. The problem ari...
We consider an estimation problem with observations from a Gaussian process. The problem arises from...
AbstractWe establish contiguity of families of probability measures indexed by T, as T → ∞, for clas...
AbstractLet {X(t): t ∈ [a, b]} be a Gaussian process with mean μ ∈ L2[a, b] and continuous covarianc...
It is shown that, for discrete-time processes, both the causal minimum variance estimate of an arbit...
We present a novel approach to inference in conditionally Gaussian continuous time stochastic proces...
The theory of linear filtering of stochastic processes provides continuous time analogues of finite-...