Interest in continuous-time processes has increased rapidly in recent
years, largely because of the high-frequency data available in many areas of
application, particularly in finance and turbulence.
We develop a method for estimating the kernel function of a continuous-time moving
average (CMA) process Y which takes advantage of the high-frequency of the data.
In order to do so we examine the relation between the CMA process Y and the
discrete-time process $Y^\Delta$ obtained by sampling Y at times which are integer
multiples of some small positive $\Delta$. In particular we derive asymptotic
results as $\Delta\downarrow 0$ which generalize results of Brockwell, Ferrazzano
and Klüppelberg (2011) for high-frequency sampling of CARMA processes.
We propose an estimator of the continuous-time kernel based on observations of
$Y^\Delta$, investigate its properties and illustrate its performance using
simulated data. Particular attention is paid to the performance of the estimator as
$\Delta\downarrow 0$. Time-domain and frequency-domain methods are used to obtain
insight into CMA processes and their sampled versions.
«
Interest in continuous-time processes has increased rapidly in recent
years, largely because of the high-frequency data available in many areas of
application, particularly in finance and turbulence.
We develop a method for estimating the kernel function of a continuous-time moving
average (CMA) process Y which takes advantage of the high-frequency of the data.
In order to do so we examine the relation between the CMA process Y and the
discrete-time process $Y^\Delta$ obtained by samplin...
»