Volume 38, Issue 6
Original Article

Multi‐Scale Detection of Variance Changes in Renewal Processes in the Presence of Rate Change Points

Stefan Albert

Institute of Mathematics, Goethe University, Frankfurt (Main), Germany

These authors contributed equally to this work.Search for more papers by this author
Michael Messer

Institute of Mathematics, Goethe University, Frankfurt (Main), Germany

These authors contributed equally to this work.Search for more papers by this author
Julia Schiemann

Centre for Integrative Physiology, University of Edinburgh, Edinburgh, UK

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Jochen Roeper

Institute of Neurophysiology, Goethe University, Frankfurt (Main), Germany

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Gaby Schneider

Corresponding Author

E-mail address: schneider@math.uni-frankfurt.de

Institute of Mathematics, Goethe University, Frankfurt (Main), Germany

Correspondence to: Gaby Schneider, Institute of Mathematics, Goethe University, Robert‐Mayer‐Str. 10, 60325 Frankfurt, Germany. E‐mail: schneider@math.uni-frankfurt.deSearch for more papers by this author
First published: 07 September 2017
Citations: 2

Abstract

Non‐stationarity of the rate or variance of events is a well‐known problem in the description and analysis of time series of events, such as neuronal spike trains. A multiple filter test (MFT) for rate homogeneity has been proposed earlier that detects change points on multiple time scales simultaneously. It is based on a filtered derivative approach, and the rejection threshold derives from a Gaussian limit process L which is independent of the point process parameters.

Here, we extend the MFT to variance homogeneity of life times. When the rate is constant, the MFT extends directly to the null hypothesis of constant variance. In the presence of rate change points, we propose to incorporate estimates of these in the test for variance homogeneity, using an adaptation of the test statistic. The resulting limit process shows slight deviations from L that depend on unknown process parameters. However, these deviations are small and do not considerably change the properties of the statistical test. This allows practical application, for example, to neuronal spike trains, which indicates various profiles of rate and variance change points.

Number of times cited according to CrossRef: 2

  • Multivariate GARCH models, Multivariate Time Series Analysis and Applications, undefined, (203-235), (2019).
  • The multiple filter test for change point detection in time series, Metrika, 10.1007/s00184-018-0672-1, 81, 6, (589-607), (2018).

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