On the discrete kolmogorov–wiener filter for the one-point prediction of exponentially smoothed heavy-tail processes
Datum
2022Autor
Gorev, V. N.
Gusev, A. Yu.
Korniienko, V. I.
Voronko, T. E.
Metadata
Zur LanganzeigeZusammenfassung
The prediction of telecommunication traffic is an important problem for telecommunications and cyber security, see a detailed description in [1]. There are a plenty of different (and rather sophisticated) approaches to traffic prediction, see [1]. The telecommunication traffic is considered to be stationary random process in a couple of models, and, as is known, such a simple algorithm as the Kolmogorov–Wiener filter may be applied to prediction of stationary processes. So, it is of interest to investigate the possibility of the Kolmogorov–Wiener filter application to heavy-tail process prediction, because traffic in telecommunication systems with data packet transfer in considered to be a heavy-tail random process, see [2,3]. Out previous paper [4] is devoted to the corresponding problem.