[1] In this paper, the background and functioning of a simple but effective continuous time approach for modeling irregularly spaced residual series is presented. The basic equations were published earlier by von Asmuth et al. (2002), who used them as part of a continuous time transfer function noise model. It is shown that the methods behind the model are build on two principles: The first is the fact that the equations of a Kalman filter degenerate to a form that is equivalent to ‘‘conventional’ ’ autoregressive moving average (ARMA) models when the modeled data are considered to be free of measurement errors. This assumption, in comparison to the ‘‘full’ ’ Kalman filter, also yields a better prediction efficiency (Ahsan and O’Connor, 199...
This paper derives exact discrete time representations for data generated by a continuous time autor...
In many experimental studies, repeated observations are made on each of a number of experimental uni...
This paper derives exact discrete time representations for data generated by a continuous time autor...
In this paper, the background and functioning of a simple but effective continuous time approach for...
The paper discusses techniques for analysis of sequential data from variable processes, particularly...
This paper explores the representation and estimation of mixed continuous time ARMA (autoregressive ...
Abstract. Box-Jenkins time series modeling technique is a powerful tool. Yet, it requires a substant...
This paper explores the representation and estimation of mixed continuous time ARMA (autoregressive ...
The problem of identification of a stochastic linear dynamic system is an important one in the field...
We consider a multivariate continuous time process, generated by a system of linear stochastic diffe...
Autoregressive-moving-average (ARMA) models are mathematical models of the persistence, or autocorre...
Irregularly spaced time series are commonly encountered in the analysis of time series. A particular...
Introduction Chapter I. Time Series 1.1 Sample of a stochastic process 1.2 Stationarity and trend of...
This paper studies the residual empirical process of long- and short-memory time series regression m...
AbstractA process generated by a stochastic differential equation driven by pure noise is sampled at...
This paper derives exact discrete time representations for data generated by a continuous time autor...
In many experimental studies, repeated observations are made on each of a number of experimental uni...
This paper derives exact discrete time representations for data generated by a continuous time autor...
In this paper, the background and functioning of a simple but effective continuous time approach for...
The paper discusses techniques for analysis of sequential data from variable processes, particularly...
This paper explores the representation and estimation of mixed continuous time ARMA (autoregressive ...
Abstract. Box-Jenkins time series modeling technique is a powerful tool. Yet, it requires a substant...
This paper explores the representation and estimation of mixed continuous time ARMA (autoregressive ...
The problem of identification of a stochastic linear dynamic system is an important one in the field...
We consider a multivariate continuous time process, generated by a system of linear stochastic diffe...
Autoregressive-moving-average (ARMA) models are mathematical models of the persistence, or autocorre...
Irregularly spaced time series are commonly encountered in the analysis of time series. A particular...
Introduction Chapter I. Time Series 1.1 Sample of a stochastic process 1.2 Stationarity and trend of...
This paper studies the residual empirical process of long- and short-memory time series regression m...
AbstractA process generated by a stochastic differential equation driven by pure noise is sampled at...
This paper derives exact discrete time representations for data generated by a continuous time autor...
In many experimental studies, repeated observations are made on each of a number of experimental uni...
This paper derives exact discrete time representations for data generated by a continuous time autor...