Yıl: 2014 Cilt: 8 Sayı: 1 Sayfa Aralığı: 8 - 16 Metin Dili: Türkçe İndeks Tarihi: 29-07-2022

BAYES TEORİSİNİN SU ÜRÜNLERİNDE KULLANIM OLANAKLARI

Öz:
Bu çalışma ile Bayesyen istatistik yöntemin, su ürünleri alanındaki uygulama olanakları araştırılmıştır. Balıkçılık çalışmalarında kullanılan boy-ağırlık verilerine doğrusal regresyon yapılarak hem Bayesyen istatistik yöntem hem de klasik istatistik yöntemle ilgili parametreler ve güven aralıklar tahmin edilmiştir. Sonuçta, Bayesyen yaklaşımın klasik yaklaşımdan daha isabetli ve güvenilir olduğu saptanmıştır
Anahtar Kelime:

Konular: İstatistik ve Olasılık

The Usage of Bayes Theory in Fisheries Sciences

Öz:
In this study, we have examined the focus of using the Bayes statistical method to the field of fisheries. It has been estimated the parameters and confidence intervals for length-weight simple linear regressionin fisheries by applying the Bayesian and classical statistical methods. Therefore, it could be concluded that the Bayesian approach was better than classical statistical method in the sense of efficiency and giving narrow confident intervals
Anahtar Kelime:

Konular: İstatistik ve Olasılık
Belge Türü: Makale Makale Türü: Araştırma Makalesi Erişim Türü: Erişime Açık
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APA AKAR M, Gündogdu S (2014). BAYES TEORİSİNİN SU ÜRÜNLERİNDE KULLANIM OLANAKLARI. , 8 - 16.
Chicago AKAR MUSTAFA,Gündogdu Sedat BAYES TEORİSİNİN SU ÜRÜNLERİNDE KULLANIM OLANAKLARI. (2014): 8 - 16.
MLA AKAR MUSTAFA,Gündogdu Sedat BAYES TEORİSİNİN SU ÜRÜNLERİNDE KULLANIM OLANAKLARI. , 2014, ss.8 - 16.
AMA AKAR M,Gündogdu S BAYES TEORİSİNİN SU ÜRÜNLERİNDE KULLANIM OLANAKLARI. . 2014; 8 - 16.
Vancouver AKAR M,Gündogdu S BAYES TEORİSİNİN SU ÜRÜNLERİNDE KULLANIM OLANAKLARI. . 2014; 8 - 16.
IEEE AKAR M,Gündogdu S "BAYES TEORİSİNİN SU ÜRÜNLERİNDE KULLANIM OLANAKLARI." , ss.8 - 16, 2014.
ISNAD AKAR, MUSTAFA - Gündogdu, Sedat. "BAYES TEORİSİNİN SU ÜRÜNLERİNDE KULLANIM OLANAKLARI". (2014), 8-16.
APA AKAR M, Gündogdu S (2014). BAYES TEORİSİNİN SU ÜRÜNLERİNDE KULLANIM OLANAKLARI. Journal of FisheriesSciences.com, 8(1), 8 - 16.
Chicago AKAR MUSTAFA,Gündogdu Sedat BAYES TEORİSİNİN SU ÜRÜNLERİNDE KULLANIM OLANAKLARI. Journal of FisheriesSciences.com 8, no.1 (2014): 8 - 16.
MLA AKAR MUSTAFA,Gündogdu Sedat BAYES TEORİSİNİN SU ÜRÜNLERİNDE KULLANIM OLANAKLARI. Journal of FisheriesSciences.com, vol.8, no.1, 2014, ss.8 - 16.
AMA AKAR M,Gündogdu S BAYES TEORİSİNİN SU ÜRÜNLERİNDE KULLANIM OLANAKLARI. Journal of FisheriesSciences.com. 2014; 8(1): 8 - 16.
Vancouver AKAR M,Gündogdu S BAYES TEORİSİNİN SU ÜRÜNLERİNDE KULLANIM OLANAKLARI. Journal of FisheriesSciences.com. 2014; 8(1): 8 - 16.
IEEE AKAR M,Gündogdu S "BAYES TEORİSİNİN SU ÜRÜNLERİNDE KULLANIM OLANAKLARI." Journal of FisheriesSciences.com, 8, ss.8 - 16, 2014.
ISNAD AKAR, MUSTAFA - Gündogdu, Sedat. "BAYES TEORİSİNİN SU ÜRÜNLERİNDE KULLANIM OLANAKLARI". Journal of FisheriesSciences.com 8/1 (2014), 8-16.