DocumentCode :
148894
Title :
Rank-based multiple change-point detection in multivariate time series
Author :
Harle, F. ; Chatelain, Florent ; Gouy-Pailler, C. ; Achard, Sophie
Author_Institution :
LIST, CEA, Gif-sur-Yvette, France
fYear :
2014
fDate :
1-5 Sept. 2014
Firstpage :
1337
Lastpage :
1341
Abstract :
In this paper, we propose a Bayesian approach for multivariate time series segmentation. A robust non-parametric test, based on rank statistics, is derived in a Bayesian framework to yield robust distribution-independent segmentations of piecewise constant multivariate time series for which mutual dependencies are unknown. By modelling rank-test p-values, a pseudo-likelihood is proposed to favour change-points detection for significant p-values. A vague prior is chosen for dependency structure between time series, and a MCMC method is applied to the resulting posterior distribution. The Gibbs sampling strategy makes the method computationally efficient. The algorithm is illustrated on simulated and real signals in two practical settings. It is demonstrated that change-points are robustly detected and localized, through implicit dependency structure learning or explicit structural prior introduction.
Keywords :
Bayes methods; signal detection; signal sampling; time series; Bayesian approach; Gibbs sampling strategy; MCMC method; explicit structural prior introduction; implicit dependency structure learning; piecewise constant multivariate time series segmentation; posterior distribution; pseudo-likelihood; rank-based multiple change-point detection; rank-test p-values; robust distribution-independent segmentation; Abstracts; Joints; Monitoring; Robustness; Bayesian inference; Gibbs sampling; MCMC methods; Rank statistics; dependency structure learning; joint segmentation;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Signal Processing Conference (EUSIPCO), 2014 Proceedings of the 22nd European
Conference_Location :
Lisbon
Type :
conf
Filename :
6952467
Link To Document :
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