Yıl: 2022 Cilt: 51 Sayı: 4 Sayfa Aralığı: 1160 - 1173 Metin Dili: İngilizce DOI: 10.15672/hujms.897144 İndeks Tarihi: 11-04-2023

A flexible Bayesian mixture approach for multi-modal circular data

Öz:
In this article, we consider multi-modal circular data and nonparametric inference. We introduce a doubly flexible method based on Dirichlet process circular mixtures in which parameter assumptions are relaxed. We assess and discuss in simulation studies the effi- ciency of the proposed extension relative to the standard finite mixture applications in the analysis of multi-modal circular data. The real data application shows that this relaxed approach is promising for making important contributions to our understanding of many real-life phenomena particularly in environmental sciences such as animal orientations.
Anahtar Kelime: directional data Dirichlet process prior mixture models stick breaking construction animal orientation

Belge Türü: Makale Makale Türü: Araştırma Makalesi Erişim Türü: Erişime Açık
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APA KILIÇ M, Kalaylioglu Z, SenGupta A (2022). A flexible Bayesian mixture approach for multi-modal circular data. , 1160 - 1173. 10.15672/hujms.897144
Chicago KILIÇ Muhammet,Kalaylioglu Zeynep,SenGupta Ashis A flexible Bayesian mixture approach for multi-modal circular data. (2022): 1160 - 1173. 10.15672/hujms.897144
MLA KILIÇ Muhammet,Kalaylioglu Zeynep,SenGupta Ashis A flexible Bayesian mixture approach for multi-modal circular data. , 2022, ss.1160 - 1173. 10.15672/hujms.897144
AMA KILIÇ M,Kalaylioglu Z,SenGupta A A flexible Bayesian mixture approach for multi-modal circular data. . 2022; 1160 - 1173. 10.15672/hujms.897144
Vancouver KILIÇ M,Kalaylioglu Z,SenGupta A A flexible Bayesian mixture approach for multi-modal circular data. . 2022; 1160 - 1173. 10.15672/hujms.897144
IEEE KILIÇ M,Kalaylioglu Z,SenGupta A "A flexible Bayesian mixture approach for multi-modal circular data." , ss.1160 - 1173, 2022. 10.15672/hujms.897144
ISNAD KILIÇ, Muhammet vd. "A flexible Bayesian mixture approach for multi-modal circular data". (2022), 1160-1173. https://doi.org/10.15672/hujms.897144
APA KILIÇ M, Kalaylioglu Z, SenGupta A (2022). A flexible Bayesian mixture approach for multi-modal circular data. Hacettepe Journal of Mathematics and Statistics, 51(4), 1160 - 1173. 10.15672/hujms.897144
Chicago KILIÇ Muhammet,Kalaylioglu Zeynep,SenGupta Ashis A flexible Bayesian mixture approach for multi-modal circular data. Hacettepe Journal of Mathematics and Statistics 51, no.4 (2022): 1160 - 1173. 10.15672/hujms.897144
MLA KILIÇ Muhammet,Kalaylioglu Zeynep,SenGupta Ashis A flexible Bayesian mixture approach for multi-modal circular data. Hacettepe Journal of Mathematics and Statistics, vol.51, no.4, 2022, ss.1160 - 1173. 10.15672/hujms.897144
AMA KILIÇ M,Kalaylioglu Z,SenGupta A A flexible Bayesian mixture approach for multi-modal circular data. Hacettepe Journal of Mathematics and Statistics. 2022; 51(4): 1160 - 1173. 10.15672/hujms.897144
Vancouver KILIÇ M,Kalaylioglu Z,SenGupta A A flexible Bayesian mixture approach for multi-modal circular data. Hacettepe Journal of Mathematics and Statistics. 2022; 51(4): 1160 - 1173. 10.15672/hujms.897144
IEEE KILIÇ M,Kalaylioglu Z,SenGupta A "A flexible Bayesian mixture approach for multi-modal circular data." Hacettepe Journal of Mathematics and Statistics, 51, ss.1160 - 1173, 2022. 10.15672/hujms.897144
ISNAD KILIÇ, Muhammet vd. "A flexible Bayesian mixture approach for multi-modal circular data". Hacettepe Journal of Mathematics and Statistics 51/4 (2022), 1160-1173. https://doi.org/10.15672/hujms.897144