Türkiye Bilişim Vadisinin Bilgisayarlı Argüman Delfi Yöntemi İle Öngörülmesi

Bu çalışmanın amacı, son yıllarda gündeme gelen Türkiye’nin “Bilişim Vadisi” projesinin toplumsal öngörü analizini bilimsel yöntemlerle yaparak çıkan sonuçların yorumlanmasıdır. Konu hakkında kitle kaynak kullanılarak sosyal ağlar üzerinde konuya ilgi duyan kişilerin diyalektik tartışmalarına imkan veren bilgisayarlı argüman Delfi yöntemi kullanılmış ve elde edilen sonuçlar yine bu yöntemle birleştirilerek değerlendirilmiştir. Makale kapsamında, kullanılan metodun detayları, ulaşılan kişiler ve demografik yapısı, elde edilen bulgular ve bu bulguların iş kümeleri açısından anlamı açıklanacaktır. 

Forecasting Turkish Informatics Valley via Computerised Argument Delphi Technique

The aim of this study is an actual foresight analysis of Information Valley in Turkey and its social analysis through scientific methodologies and interpretation of its outcomes. Computerized Argument Delphi method has been utilized in order to collect the information from social networks with crowd sourcing approach. The method also supplies the dialectic discussion on the arguments of the contributors. Also the outcomes achieved from the computerized Argument Delphi has been aggregated and evaluation within the technique. This paper covers the details of the methodology, demography of the contributors, outcomes and the meaning of outcomes from the job clustering perspective

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