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hal-00363627, version 1

Segmentation in the mean of heteroscedastic data via cross-validation

Sylvain Arlot () 1, Alain Celisse () 2

Document de travail (2009)

Abstract: This paper tackles the problem of detecting abrupt changes in the mean of a heteroscedastic signal by model selection, without knowledge on the variations of the noise. Whereas most existing methods are not robust to heteroscedasticity, a new family of algorithms is proposed showing that cross-validation methods can be successful in this framework. The robustness to heteroscedasticity of the new cross-validation based change-point detection algorithms is supported by an extensive simulation study, together with recent theoretical results. An application to comparative genomic hybridization data is provided, showing that robustness to heteroscedasticity can indeed be required for their analysis.

  • 1:  Laboratoire d'informatique de l'école normale supérieure (LIENS)
  • CNRS : UMR8548 – Ecole normale supérieure de Paris - ENS Paris
  • 2:  UMR 518 AGROPARISTECH/INRA MIA
  • Institut national de la recherche agronomique (INRA) : UMR518 – AgroParisTech
  • Domain : Statistics/Methodology
    Mathematics/Statistics
    Statistics/Statistics Theory
  • Keywords : Change-point detection – segmentation – resampling – cross-validation – leave-p-out – heteroscedastic data – CGH profile.
  • Available versions :  v1 (2009-02-23) v2 (2009-04-08)
 
  • hal-00363627, version 1
  • oai:hal.archives-ouvertes.fr:hal-00363627
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  • Submitted on: Monday, 23 February 2009 19:48:02
  • Updated on: Monday, 23 February 2009 20:27:58