Improved Surrogate Data for Nonlinearity Tests

Thomas Schreiber and Andreas Schmitz
Phys. Rev. Lett. 77, 635 – Published 22 July 1996
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Abstract

Current tests for nonlinearity compare a time series to the null hypothesis of a Gaussian linear stochastic process. For this restricted null assumption, random surrogates can be constructed which are constrained by the linear properties of the data. We propose a more general null hypothesis allowing for nonlinear rescalings of a Gaussian linear process. We show that such rescalings cannot be accounted for by a simple amplitude adjustment of the surrogates which leads to spurious detection of nonlinearity. An iterative algorithm is proposed to make appropriate surrogates which have the same autocorrelations as the data and the same probability distribution.

  • Received 9 February 1996

DOI:https://doi.org/10.1103/PhysRevLett.77.635

©1996 American Physical Society

Authors & Affiliations

Thomas Schreiber and Andreas Schmitz

  • Physics Department, University of Wuppertal, D-42097 Wuppertal, Germany

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Issue

Vol. 77, Iss. 4 — 22 July 1996

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