This paper explores the representation and estimation of mixed continuous time ARMA (autoregressive moving average) systems of orders $p$, $q$. Taking the general case of mixed stock and flow variables, we discuss new state space and exact discrete time representations and demonstrate that the discrete time ARMA representations widely used in empirical work, based on differencing stock variables, are members of a class of observationally equivalent discrete time ARMA($p+1$,\,$p$) representations, which includes a more natural ARMA($p$,\,$p$) representation. We compare and contrast two approaches to likelihood evaluation and computation, namely one based on an exact discrete time representation and another utilising a state space representat...
This thesis presents the exact discrete time representations of first order continuous time models w...
This lecture surveys the recent literature on estimating continuous-time models using discrete obser...
This paper introduces a new parameter estimator of dynamic models in which the state is a multidimen...
This paper explores the representation and estimation of mixed continuous time ARMA (autoregressive ...
This paper derives exact discrete time representations for data generated by a continuous time autor...
This paper derives exact discrete time representations for data generated by a continuous time autor...
The time aggregation of vector linear processes containing (i) mixed stock- ow data and (ii) aggrega...
The problem of estimating a continuous time model using discretely observed data is common in empiri...
The problem of estimating a continuous time model using discretely observed data is common in empiri...
This paper derives exact representations for discrete time mixed frequency data generated by an unde...
This paper derives exact representations for discrete time mixed frequency data generated by an unde...
AbstractThis paper derives exact representations for discrete time mixed frequency data generated by...
[1] In this paper, the background and functioning of a simple but effective continuous time approach...
We consider a multivariate continuous time process, generated by a system of linear stochastic diffe...
In this paper, the background and functioning of a simple but effective continuous time approach for...
This thesis presents the exact discrete time representations of first order continuous time models w...
This lecture surveys the recent literature on estimating continuous-time models using discrete obser...
This paper introduces a new parameter estimator of dynamic models in which the state is a multidimen...
This paper explores the representation and estimation of mixed continuous time ARMA (autoregressive ...
This paper derives exact discrete time representations for data generated by a continuous time autor...
This paper derives exact discrete time representations for data generated by a continuous time autor...
The time aggregation of vector linear processes containing (i) mixed stock- ow data and (ii) aggrega...
The problem of estimating a continuous time model using discretely observed data is common in empiri...
The problem of estimating a continuous time model using discretely observed data is common in empiri...
This paper derives exact representations for discrete time mixed frequency data generated by an unde...
This paper derives exact representations for discrete time mixed frequency data generated by an unde...
AbstractThis paper derives exact representations for discrete time mixed frequency data generated by...
[1] In this paper, the background and functioning of a simple but effective continuous time approach...
We consider a multivariate continuous time process, generated by a system of linear stochastic diffe...
In this paper, the background and functioning of a simple but effective continuous time approach for...
This thesis presents the exact discrete time representations of first order continuous time models w...
This lecture surveys the recent literature on estimating continuous-time models using discrete obser...
This paper introduces a new parameter estimator of dynamic models in which the state is a multidimen...