Bağımsız Bileşenler Analizi ile Çoklu Bağlantı Sorununa Bir Yaklaşım
Göster/ Aç
Tarih
2019-07-19Yazar
Bursa, Nurbanu
Ambargo Süresi
Acik erisimÜst veri
Tüm öğe kaydını gösterÖzet
In the first part of the thesis, although it is a multivariate statistical method, Independent Components Analysis which is mostly used in the engineering field, which is not known much in statistics, has been discussed in detail and has been contributed to the limited Turkish literature.
Secondly, a new solution was proposed by Independent Components Analysis to the multicollinearity problem, which is one of the most common problems in multiple linear regression analysis, which caused the assumption distortions and caused negative effects on the regression model. Thus, it has been shown that the analysis can be used as a tool for different purposes in addition to its current uses. In this context, a new method has been developed based on Independent Components Analysis, which is similar to the operation of biased regression methods such as Principal Components Regression and Partial Least Squares Regression used to solve multicollinearity problem. The novel contribution of this method to the literature is that the use of mutual information, a concept in the field of entropy, is proposed in the selection of independent components to be included in multiple linear regression analysis. The performance of the developed method was evaluated separately on artificial and real datasets.
As a result, it was determined that the proposed method based on Independent Components Analysis can be used to solve the multicollinearity problem, estimation and prediction can be made with lower error amount than other biased regression methods for the explained (dependent) variable in the regression analysis, and regression coefficients can be estimated with lower standard errors.
Bağlantı
http://hdl.handle.net/11655/9451Koleksiyonlar
İlgili öğeler
Başlık, yazar, küratör ve konuya göre gösterilen ilgili öğeler.
-
Bağımsız Bileşenler Analizi ile Çok Değişkenli Jeoistatistiksel Kestirim
Sohrabian, Babak (Fen Bilimleri Enstitüsü, 2013)This work is prepared with the support of TÜBİTAK Project, named ‘’Çokdeğişkenli Jeoistatistiksel Kestirimde Dikleştirilmiş Bileşenli Yeni Yöntemlerin Geliştirilmesi’’ with the code number 111M218. Geostatistical estimation ... -
Veri Zarflama Analizinde Temel Bileşenler Analizinin Kullanımı
Asar, Seda Sütçü (Fen Bilimleri Enstitüsü, 2014)In this thesis, after presenting general information about activity measurement and about efficiency factor which directly affects business performance, the detailed information about data envelopment analysis is given.Data ... -
Temel Bileşenler Analizi ve Kanonik Korelasyon Analizi ile İmge Tanıma ve Sınıflandırma
Çatalbaş, Mehmet Cem (Fen Bilimleri Enstitüsü, 2014)This work investigates the role of canonical correlations analysis in image recognition and classification problems with comparison to principal components analysis. Principal components analysis is a well-known and widely ...