Türkiye Ulusal Spor Federasyonlarında Ters VZA İle Kaynak Tahsisi

Sporcular, antrenörler, sponsorlar ve kamu otoritelerini içeren paydaşlarının beklentilerini karşılamak için ulusal spor federasyonlarının (NSF'ler) performans ölçüm modellerini üstlenmesi gerekmektedir. Bu çalışmada Ters Veri Zarflama Analizi(InDEA) modelleri kullanılarak 18. Akdeniz Oyunları'na katılan Türkiye'den 15 spor federasyonunun etkinlik analizi yapılmıştır. Sonuçlar, spor federasyonlarının ortalama verimliliğinin oldukça düşük olduğunu ortaya koymuştur. Önerilen InDEA modeli, NSF'lerin ve farklı organizasyonların yöneticilerine üretim analizi, performans ölçümü, kaynak planlama ve stratejik yönetim konusunda yardımcı olabilir.

Resource Allocation of the National Sport Federations of Turkey with Inverse DEA

In order to meet the expectations of their stakeholders involving athletes, coaches, sponsors and public authorities, national sport federations (NSFs) need to undertake performance measurement models. In this study, using inverse Data Envelopment Analysis (InDEA) models, an efficiency analysis of 15 sports federations of Turkey which participated in the 18th Mediterranean Games was performed. The results revealed that the average efficiency of the sports federations was considerably low. The suggested InDEA model can help managers of NSFs and different organizations with production analysis, performance measurement, resource planning and strategic management.

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