Title of article
Long memory or shifting means in geophysical time series? Original Research Article
Author/Authors
William Rea، نويسنده , , Marco Reale، نويسنده , , Jennifer Brown، نويسنده , , Les Oxley، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2011
Pages
13
From page
1441
To page
1453
Abstract
In the literature many papers state that long-memory time series models such as Fractional Gaussian Noises (FGN) or Fractionally Integrated series (FI(d)) are empirically indistinguishable from models with a non-stationary mean, but which are mean reverting. We present an analysis of the statistical cost of model mis-specification when simulated long memory series are analysed by Atheoretical Regression Trees (ART), a structural break location method. We also analysed three real data sets, one of which is regarded as a standard example of the long memory type. We find that FGN and FI(d) processes do not account for many features of the real data. In particular, we find that the data sets are not H-self-similar. We believe the data sets are better characterized by non-stationary mean models.
Keywords
Strong dependence , Hurst phenomena , Global dependence , Long-range dependence
Journal title
Mathematics and Computers in Simulation
Serial Year
2011
Journal title
Mathematics and Computers in Simulation
Record number
855096
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