Bağımlı değişkenin simetrik bulanık sayı olması durumunda parametre tahmini
Abstract
Bu çalmada, baml deikenin simetrik bulank say olmas durumunda, regresyon modelinin
parametrelerinin tahmin edilmesi için, bulank çkarsama sistemine dayal uyarlamal an (ANFIS)
kullanld bir algoritma ve bulank robust regresyon’a dayal bir algoritma ele alnarak parametre tahmini
yaplmtr. Bulank robust regresyon ve ANFIS’in kullanld algoritmadan elde sonuçlar Dimond (1988)
tarafndan önerilen yöntemden elde edilen sonuçlar ile karlatrlmtr.
Keywords
References
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Details
Primary Language
Turkish
Subjects
Engineering
Journal Section
Research Article
Publication Date
December 30, 2010
Submission Date
July 23, 2014
Acceptance Date
-
Published in Issue
Year 2010 Volume: 3 Number: 2