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    LARGE SAMPLE INFERENCE FOR LONG MEMORY PROCESSES

    by Liudas Giraitis (Queen Mary, University of London, UK), Hira L Koul (Michigan State University, USA), & Donatas Surgailis (Vilnius University, Lithuania)

    Box and Jenkins (1970) made the idea of obtaining a stationary time series by differencing the given, possibly nonstationary, time series popular. Numerous time series in economics are found to have this property. Subsequently, Granger and Joyeux (1980) and Hosking (1981) found examples of time series whose fractional difference becomes a short memory process, in particular, a white noise, while the initial series has unbounded spectral density at the origin, i.e. exhibits long memory.

    Further examples of data following long memory were found in hydrology and in network traffic data while in finance the phenomenon of strong dependence was established by dramatic empirical success of long memory processes in modeling the volatility of the asset prices and power transforms of stock market returns.

    At present there is a need for a text from where an interested reader can methodically learn about some basic asymptotic theory and techniques found useful in the analysis of statistical inference procedures for long memory processes. This text makes an attempt in this direction. The authors provide in a concise style a text at the graduate level summarizing theoretical developments both for short and long memory processes and their applications to statistics. The book also contains some real data applications and mentions some unsolved inference problems for interested researchers in the field.

     
    Contents:
    • Some Preliminaries
    • Characterization of Short and Long Memory Processes
    • Asymptotics of the Variance
    • Limit Theory for Sums
    • Properties of DFT and Periodogram
    • Asymptotic Theory for Quadratic Forms
    • Parametric Models
    • Parametric and Semiparametric Estimation
    • Elementary Inference Problems
    • Testing for Long Memory and Breaks
    • Empirical Processes
    • Regression Models
    • First Order Asymptotics of M and R Estimators
    • Nonparametric Regression
    • Model Diagnostics
    • Lack-of-Fit Tests
    • Testing a Subhypothesis
    • Appell Polynomials, Wick Products & Diagram Formulas
     
    Readership: Students and professionals in statistics, econometrics and finance.
     
     
    588pp (approx.)    Pub. date: Scheduled Summer 2012  
    ISBN:   978-1-84816-278-5
    1-84816-278-2
       US$118 / £78

     


     

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    Updated on 10 February 2012