State space modeling of long-memory processes
Chan, Ngai Hang ; Palma, Wilfredo
Ann. Statist., Tome 26 (1998) no. 3, p. 719-740 / Harvested from Project Euclid
This paper develops a state space modeling for long-range dependent data. Although a long-range dependent process has an infinite-dimensional state space representation, it is shown that by using the Kalman filter, the exact likelihood function can be computed recursively in a finite number of steps. Furthermore, an approximation to the likelihood function based on the truncated state space equation is considered. Asymptotic properties of these approximate maximum likelihood estimates are established for a class of long-range dependent models, namely, the fractional autoregressive moving average models. Simulation studies show rapid converging properties of the approximate maximum likelihood approach.
Publié le : 1998-04-14
Classification:  ARFIMA,  asymptotic normality,  consistency,  efficiency,  long-memory,  MLE,  truncated state space,  62M10,  62E20,  60F17
@article{1028144856,
     author = {Chan, Ngai Hang and Palma, Wilfredo},
     title = {State space modeling of long-memory processes},
     journal = {Ann. Statist.},
     volume = {26},
     number = {3},
     year = {1998},
     pages = { 719-740},
     language = {en},
     url = {http://dml.mathdoc.fr/item/1028144856}
}
Chan, Ngai Hang; Palma, Wilfredo. State space modeling of long-memory processes. Ann. Statist., Tome 26 (1998) no. 3, pp.  719-740. http://gdmltest.u-ga.fr/item/1028144856/