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CPS2133 Alexander Schnurr et al.
Acknowledgement
Financial support by the DFG (German Science Council) for the project‚
Ordinal-Pattern-Dependence: Grenzwertsaetze und Strukturbrueche im
langzeitabhaengigen Fall mit Anwendungen in Hydrologie, Medizin und
Finanzmathematik‘ (SCHN 1231/3-1) is gratefully acknowledged. In addition
we would like to thank Albert Piek (Luebeck) for providing us with Figure 1.
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