Meta Analizi İle Box-Cox Dönüşümü İçin Yeni Bir Yaklaşım Ve İnternet Tabanlı Uygulaması
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Tarih
2022-07-25Yazar
Yılmaz, Muhammed Ali
Ambargo Süresi
Acik erisimÜst veri
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The assumption of normality is one of the common
assumptions in health studies. In cases where the normality assumption is not met, one of
the frequently used solution methods is to transform on a non-normally distributed data set.
One of the frequently used transformation methods is the Box-Cox transformation method.
Box-Cox transformation method is a power transformation method with unknown
transformation parameter. In this thesis, we proposed a new approach for the estimation of
the unknown transformation parameter of the Box-Cox transformation method. Our
proposed approach is based on combining different parameter estimation methods with
meta-analysis. We compared our propesed approach and other methods under different
scenarios with the Monte Carlo simulation study. As a result of the simulation study, it has
been seen that our proposed approach has a more successful performance in parameter
estimation than other methods. Moreover, we applied the proposed approach on two
different real data. In addition, we made our proposed approach accessible to researchers as
a function named "boxcoxmeta" under the AID library in the R program. Finally, we have
developed an internet-based tool involving our proposed approach in this thesis.