Asymptotic Normality of a Hurst Parameter Estimator Based on the Modified Allan Variance

نویسندگان

  • Alessandra Bianchi
  • Massimo Campanino
  • Irene Crimaldi
  • Hari Srivastava
چکیده

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.

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تاریخ انتشار 2014