Tüketicinin Nesnelerin Interneti Teknolojilerini Benimsemesi ve Bir Uygulama

Öz Bu çalışmanın amacı tüketicilerin gelecekte Nesnelerin İnterneti (Nİ) teknolojilerinin kabulüne yönelik davranışsal niyetinin açıklanmasıdır. Bütünleşik Teknoloji Kabul ve Kullanım Teorisi 2’de yer alan Performans Beklentisi, Çaba Beklentisi, Sosyal Etki, Hazsal Motivasyon ve Alışkanlık değişkenlerine Güven ile Güvenlik ve Mahremiyet değişkenleri eklenmiştir. Ayrıca moderatör etkisine bakmak amacıyla Teknoloji Hazır Olma İndeksi de çalışmada yer almaktadır. 377 katılımcıdan elde edilen veriler PLS-Yapısal Eşitlik Modellemesi yöntemiyle analiz edilmiştir. Bulgulara göre davranışsal niyete ait R^2 yüksek kabul edilebilecek bir değer olan 0,60 olarak bulunmuştur. Ayrıca tüketicilerin mevcut akıllı cihazlarla girdikleri etkileşimleri sonucu sahip oldukları deneyim, onların yeni teknolojilere de alışkanlık kazanacakları inancını yansıtmakta ve dolayısıyla bu teknolojileri benimseyebileceklerini göstermektedir. Güven değişkeninin tüketicilerin bu teknolojilerden beklentilerini karşılamasında önemli bir değişken olduğu ortaya çıkmaktadır. Her ne kadar güvenlik ve mahremiyetin DN üzerinde doğrudan etkisi tespit edilemese de, hazsal motivasyonun tam aracılık etkisiyle, DN üzerinde pozitif ve anlamlı etkisi saptanmıştır. Tüketicilerin Nİ teknolojileriyle ilişkili veri mahremiyetinin korunması gibi konularda yeteri kadar bilgi sahibi olmadıkları anlaşılırken, Nİ teknolojilerinin kullanımı ile elde edilecek hazza yönelik inanç tüketicilerin veri mahremiyetine yönelik korkularını azaltmaktadır. Öte yandan tüketicilerin teknolojiye hazır olma seviyeleri yükseldikçe daha fazla haz alma, algılanan faydada artış ve daha kolay bir kullanım algısının oluşacağı sonucu çıkmaktadır. Özgünlük katan diğer birçok gizil ilişki ile birlikte bu çalışma, gelecekte bu teknolojilerin tüketiciler tarafından kabulü noktasında hem teorik hem de uygulamaya ışık tutması açısından önemli sonuçlar elde edilmesini sağlamıştır.

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APA Kağnıcıoğlu, C. H. & Çolak, H. (2019). Tüketicinin Nesnelerin Interneti Teknolojilerini Benimsemesi ve Bir Uygulama . Anadolu Üniversitesi Sosyal Bilimler Dergisi , 19 (4) , 241-268 . DOI: 10.18037/ausbd.668649