MABAC Yöntemiyle Çevresel, Sosyal ve Ekonomik Yönlerden En Uygun Mortgage Kredi Sağlayıcısının Belirlenmesi

Türkiye'de bankacılık sektörü, aktif büyüklüğü ile en önemli sektörlerden biri olup sektörün en büyük aktif kalemi olan kredilerdir. Küresel yasal düzenlemeler ve artan rekabet nedeniyle bankalar mevcut konumlarını koruyabilmek için ekonomik faktörlerin yanı sıra çevresel ve sosyal faktörleri de göz önünde bulundurmak zorundadırlar. Bu nedenle bu çalışmada, bankalar tarafından sağlanan konut kredisinin ekonomik değerlendirmesinin yanı sıra çevresel ve sosyal kriterleri de dikkate alınarak değerlendirilmesi için bir ÇKKV problemi ortaya konulmuştur. Literatürde elde edilen kriterlerle Türkiye'de yerleşik 7 bankanın bütünleşik değerlendirmesinde Çok Nitelikli Sınır Yakınlaştırma Alanı Karşılaştırması (MABAC) metodu kullanılmıştır. Elde edilen sıralama da Ziraat bankası birinci, İş Bankası ikinci ve Vakıfbank üçüncü sırada yer almıştır.

Determination of The Most Appropriate Mortgage Credit Provider with MABAC Method Through Environmental, Social and Economic Aspects

The banking sector in Turkey is one of the most important industries with its asset size, and loans are the largest item in the sector. Due to global legal regulations and increasing competition, banks have to consider environmental and social factors as well as economic factors in order to maintain their current position. Therefore, in this study, an MCDM problem has been put forward for the evaluation of housing loans provided by banks by considering environmental and social criteria as well as economic aspects. Multi-Attribute Border Convergence Field Comparison (MABAC) method was used in the integrated evaluation of 7 banks located in Turkey with the criteria obtained from the literature. In the ranking obtained, Ziraat Bank took the first place, İşbank took the second place and Vakıfbank took the third place.

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