Detecting dynamical changes in time series using the permutation entropy.

Yinhe Cao, Wen-Wen Tung, J B Gao, V A Protopopescu, L M Hively
Author Information
  1. Yinhe Cao: BioSieve, San Jose, California 95117, USA. contact@biosieve.com

Abstract

Timely detection of unusual and/or unexpected events in natural and man-made systems has deep scientific and practical relevance. We show that the recently proposed conceptually simple and easily calculated measure of permutation entropy can be effectively used to detect qualitative and quantitative dynamical changes. We illustrate our results on two model systems as well as on clinically characterized brain wave data from epileptic patients.

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