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Model selection for the segmentation of multiparameter exponential family distributions
- Source :
- Electronic Journal of Statistics 1 (11), 800-842. (2017)
- Publication Year :
- 2017
-
Abstract
- We consider the segmentation problem of univariate distributions from the exponential family with multiple parameters. In segmentation, the choice of the number of segments remains a difficult issue due to the discrete nature of the change-points. In this general exponential family distribution framework, we propose a penalized log-likelihood estimator where the penalty is inspired by papers of L. Birg´e and P. Massart. The resulting estimator is proved to satisfy an oracle inequality. We then further study the particular case of categorical variables by comparing the values of the key constants when derived from the specification of our general approach and when obtained by working directly with the characteristics of this distribution. Finally, a simulation study is conducted to assess the performance of our criterion for the exponential distribution, and an application on real data modeled by the categorical distribution is provided.
- Subjects :
- Model selection
Change-point detection
Distribution estimation
Exponential Family
Subjects
Details
- Language :
- English
- Database :
- OpenAIRE
- Journal :
- Electronic Journal of Statistics 1 (11), 800-842. (2017)
- Accession number :
- edsair.od......1582..907895ee35b4b42a3a504c6a69370a12