In order to estimate the memory parameter of Internet traffic data, it has been recently proposed a log-regression estimator based on the so-called modified Allan variance (MAVAR). Simulations have shown that this estimator achieves higher accuracy and better confidence when compared with other methods. In this paper we present a rigorous study of the MAVAR log-regression estimator. In particular, under the assumption that the signal process is a fractional Brownian motion, we prove that it is consistent and asymptotically normally distributed. Finally, we discuss its connection with the wavelets estimators.
A. Bianchi, M. Campanino, I. Crimaldi (2012). Asymptotic Normality of a Hurst Parameter Estimator Based on the Modified Allan Variance. INTERNATIONAL JOURNAL OF STOCHASTIC ANALYSIS, 2012, 1-20 [10.1155/2012/905082].
Asymptotic Normality of a Hurst Parameter Estimator Based on the Modified Allan Variance.
CAMPANINO, MASSIMO;
2012
Abstract
In order to estimate the memory parameter of Internet traffic data, it has been recently proposed a log-regression estimator based on the so-called modified Allan variance (MAVAR). Simulations have shown that this estimator achieves higher accuracy and better confidence when compared with other methods. In this paper we present a rigorous study of the MAVAR log-regression estimator. In particular, under the assumption that the signal process is a fractional Brownian motion, we prove that it is consistent and asymptotically normally distributed. Finally, we discuss its connection with the wavelets estimators.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.