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http://dx.doi.org/10.5351/CSAM.2015.22.3.295

Estimation of Hurst Parameter in Longitudinal Data with Long Memory  

Kim, Yoon Tae (Department of Finance and Information Statistics, Hallym University)
Park, Hyun Suk (Department of Finance and Information Statistics, Hallym University)
Publication Information
Communications for Statistical Applications and Methods / v.22, no.3, 2015 , pp. 295-304 More about this Journal
Abstract
This paper considers the problem of estimation of the Hurst parameter H ${\in}$ (1/2, 1) from longitudinal data with the error term of a fractional Brownian motion with Hurst parameter H that gives the amount of the long memory of its increment. We provide a new estimator of Hurst parameter H using a two scale sampling method based on $A{\ddot{i}}t$-Sahalia and Jacod (2009). Asymptotic behaviors (consistent and central limit theorem) of the proposed estimator will be investigated. For the proof of a central limit theorem, we use recent results on necessary and sufficient conditions for multi-dimensional vectors of multiple stochastic integrals to converges in distribution to multivariate normal distribution studied by Nourdin et al. (2010), Nualart and Ortiz-Latorre (2008), and Peccati and Tudor (2005).
Keywords
Malliavin calculus; multiple stochastic integrals; central limit theorem; Hurst parameter; longitudinal data; Hurst parameter; fractional Brownian motion;
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