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JOURNALS // Problemy Peredachi Informatsii // Archive

Probl. Peredachi Inf., 2005 Volume 41, Issue 3, Pages 32–50 (Mi ppi105)

This article is cited in 7 papers

Large Systems

Tracking the Volatility Function

L. Goldentayera, F. K. Klebanerb, R. Sh. Liptserca

a Tel Aviv University
b Monash University
c Institute for Information Transmission Problems, Russian Academy of Sciences

Abstract: We propose an adaptive algorithm for tracking historical volatility. The algorithm borrows ideas from nonparametric statistics. In particular, we assume that the volatility is a several times differentiable function with a bounded highest derivative. We propose an adaptive algorithm with a Kalman filter structure, which guarantees the same asymptotics (well known from statistical inference) with respect to the sample size $n$, $n\to\infty$. The tuning procedure for this filter is simpler than for a GARCH filter.

UDC: 621.391.1:519.2

Received: 03.09.2004
Revised: 24.02.2005


 English version:
Problems of Information Transmission, 2005, 41:3, 212–229

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