133117 | ![SİBEL ATAN](data:image/jpg;base64,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) | ![ORCID](../images/orcidFav.png) PROFESÖRANKARA HACI BAYRAM VELİ ÜNİVERSİTESİ/İKTİSADİ VE İDARİ BİLİMLER FAKÜLTESİ/EKONOMETRİ BÖLÜMÜ/EKONOMETRİ ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri Yöneylem Araştırması ; İşletme İstatistiği ; Optimizasyon ve Etkinlik Analizi | sibel.atan[at]hbv.edu.tr | 1D9F469FCBD696F9 |
51346 | ![ŞENOL ALTAN](../authorimages/photo_m.jpg) | ![ORCID](../images/orcidFav.png) PROFESÖRANKARA HACI BAYRAM VELİ ÜNİVERSİTESİ/İKTİSADİ VE İDARİ BİLİMLER FAKÜLTESİ/EKONOMETRİ BÖLÜMÜ/EKONOMETRİ ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri Yöneylem Araştırması ; Çok Kıstaslı Karar Verme ; Optimizasyon ve Etkinlik Analizi | senol.altan[at]hbv.edu.tr | F84D1C3C6C2E4D4E |
133111 | ![MURAT 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| ![ORCID](../images/orcidFav.png) PROFESÖRANKARA HACI BAYRAM VELİ ÜNİVERSİTESİ/İKTİSADİ VE İDARİ BİLİMLER FAKÜLTESİ/EKONOMETRİ BÖLÜMÜ/EKONOMETRİ ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri Yöneylem Araştırması ; Çok Kıstaslı Karar Verme ; Optimizasyon ve Etkinlik Analizi | murat.atan[at]hbv.edu.tr | 7FA75F5369E033E4 |
43931 | ![İZZETTİN 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| ![ORCID](../images/orcidFav.png) PROFESÖRMERSİN ÜNİVERSİTESİ/DENİZCİLİK FAKÜLTESİ/DENİZCİLİK İŞLETMELERİ YÖNETİMİ BÖLÜMÜ/DENİZCİLİK İŞLETMELERİ YÖNETİMİ ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri Yöneylem Araştırması ; Çok Kıstaslı Karar Verme ; Optimizasyon ve Etkinlik Analizi | itemiz[at]mersin.edu.tr | 270978B92332169F |
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) | ![ORCID](../images/orcidFav.png) PROFESÖRMUĞLA SITKI KOÇMAN ÜNİVERSİTESİ/FEN FAKÜLTESİ/İSTATİSTİK BÖLÜMÜ/UYGULAMALI İSTATİSTİK ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri Veri Analitiği ; Optimizasyon ve Etkinlik Analizi ; İşletme İstatistiği | duaydin[at]mu.edu.tr | 1F780F47E054A2E4 |
206085 | ![ARZU EREN 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) | ![ORCID](../images/orcidFav.png) PROFESÖRBURSA ULUDAĞ ÜNİVERSİTESİ/İKTİSADİ VE İDARİ BİLİMLER FAKÜLTESİ/EKONOMETRİ BÖLÜMÜ/YÖNEYLEM ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri Yöneylem Araştırması ; Sezgisel ve Metasezgisel Teknikler ; Optimizasyon ve Etkinlik Analizi | arzueren[at]uludag.edu.tr | 2B9F62F0C5123934 |
131944 | ![HALİM 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| ![ORCID](../images/orcidFav.png) PROFESÖRİSTANBUL ÜNİVERSİTESİ/İKTİSAT FAKÜLTESİ/İŞLETME BÖLÜMÜ/ÜRETİM YÖNETİMİ ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri Yöneylem Araştırması ; Çok Kıstaslı Karar Verme ; Optimizasyon ve Etkinlik Analizi | halim.kazan[at]istanbul.edu.tr | 00C09D644579121E |
39109 | ![MEHMET HAKAN SATMAN](../authorimages/photo_m.jpg) | ![ORCID](../images/orcidFav.png) PROFESÖRİSTANBUL ÜNİVERSİTESİ/İKTİSAT FAKÜLTESİ/EKONOMETRİ BÖLÜMÜ/YÖNEYLEM ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri Yöneylem Araştırması ; Sezgisel ve Metasezgisel Teknikler ; Optimizasyon ve Etkinlik Analizi | mhsatman[at]istanbul.edu.tr | A8AA1BB7E60D9679 |
6162 | ![MEHPARE TİMOR](../authorimages/photo_w.jpg) | ![ORCID](../images/orcidFav.png) PROFESÖRİSTANBUL ÜNİVERSİTESİ/İŞLETME FAKÜLTESİ/İŞLETME BÖLÜMÜ/SAYISAL YÖNTEMLER ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri Yöneylem Araştırması ; Çok Kıstaslı Karar Verme ; Optimizasyon ve Etkinlik Analizi | | 0BA659DFFB2BBC17 |
9536 | ![ZEKİ YILDIZ](../authorimages/photo_m.jpg) | ![ORCID](../images/orcidFav.png) PROFESÖRESKİŞEHİR OSMANGAZİ ÜNİVERSİTESİ/FEN FAKÜLTESİ/İSTATİSTİK BÖLÜMÜ/UYGULAMALI İSTATİSTİK ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri Veri Analitiği ; Optimizasyon ve Etkinlik Analizi | zyildiz[at]ogu.edu.tr | ABFDA8A0B40057C2 |
12408 | ![ONUR 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) | ![ORCID](../images/orcidFav.png) PROFESÖRDOKUZ EYLÜL ÜNİVERSİTESİ/İKTİSADİ VE İDARİ BİLİMLER FAKÜLTESİ/İŞLETME BÖLÜMÜ/SAYISAL YÖNTEMLER ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri Yöneylem Araştırması ; Çok Kıstaslı Karar Verme ; Optimizasyon ve Etkinlik Analizi | onur.ozveri[at]deu.edu.tr | AA67074AEF873F14 |
143957 | ![İMRAN ASLAN](data:image/jpg;base64,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) | ![ORCID](../images/orcidFav.png) DOÇENTBİNGÖL ÜNİVERSİTESİ/SAĞLIK BİLİMLERİ FAKÜLTESİ/SAĞLIK YÖNETİMİ BÖLÜMÜ/HASTANE İŞLETMECİLİĞİ ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri Optimizasyon ve Etkinlik Analizi ; Çok Kıstaslı Karar Verme ; Veri Analitiği | | 61491110B6E3ACED |
18368 | ![NOYAN 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| ![ORCID](../images/orcidFav.png) DOÇENTKÜTAHYA DUMLUPINAR ÜNİVERSİTESİ/İKTİSADİ VE İDARİ BİLİMLER FAKÜLTESİ/EKONOMETRİ BÖLÜMÜ/YÖNEYLEM ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri İstatistiksel Süreç Kontrol Teknikleri ; Veri Analitiği ; Optimizasyon ve Etkinlik Analizi | noyan.aydin[at]dpu.edu.tr | C3EBBFA15C0F6286 |
33656 | ![ÖZLEM KARADAĞ ALBAYRAK](data:image/jpg;base64,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) | ![ORCID](../images/orcidFav.png) DOÇENTKAFKAS ÜNİVERSİTESİ/İKTİSADİ VE İDARİ BİLİMLER FAKÜLTESİ/ULUSLARARASI TİCARET VE LOJİSTİK BÖLÜMÜ/ULUSLARARASI TİCARET VE LOJİSTİK ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri Çok Kıstaslı Karar Verme ; Optimizasyon ve Etkinlik Analizi ; Yöneylem Araştırması | ozlemkaradagalbayrak[at]gmail.com | F11E131A0127A3A8 |
16980 | ![MUSTAFA 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) | ![ORCID](../images/orcidFav.png) DOÇENTGİRESUN ÜNİVERSİTESİ/İKTİSADİ VE İDARİ BİLİMLER FAKÜLTESİ/İŞLETME BÖLÜMÜ/SAYISAL YÖNTEMLER ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri Çok Kıstaslı Karar Verme ; Optimizasyon ve Etkinlik Analizi ; İşletme İstatistiği | mstf.ozknn[at]hotmail.com | 70E621D658992E1B |
154929 | ![ELVAN HAYAT](data:image/jpg;base64,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) | ![ORCID](../images/orcidFav.png) DOÇENTAYDIN ADNAN MENDERES ÜNİVERSİTESİ/SİYASAL BİLGİLER FAKÜLTESİ/EKONOMETRİ BÖLÜMÜ/İSTATİSTİK ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri Veri Analitiği ; Çok Kıstaslı Karar Verme ; Optimizasyon ve Etkinlik Analizi | elvan.hayat[at]adu.edu.tr | CB7BB10856627FB5 |
41197 | ![BURAK KESKİN](data:image/jpg;base64,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) | ![ORCID](../images/orcidFav.png) DOÇENTÇANKIRI KARATEKİN ÜNİVERSİTESİ/İKTİSADİ VE İDARİ BİLİMLER FAKÜLTESİ/İŞLETME BÖLÜMÜ/SAYISAL YÖNTEMLER ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri Çok Kıstaslı Karar Verme ; Optimizasyon ve Etkinlik Analizi ; İşletme İstatistiği | burakkeskiin[at]gmail.com | 2EF1CC1A0F6699D8 |
25648 | ![FATİH 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| ![ORCID](../images/orcidFav.png) DOÇENTESKİŞEHİR OSMANGAZİ ÜNİVERSİTESİ/FEN FAKÜLTESİ/İSTATİSTİK BÖLÜMÜ/UYGULAMALI İSTATİSTİK ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri Veri Analitiği ; İşletme İstatistiği ; Optimizasyon ve Etkinlik Analizi | fcemrek[at]ogu.edu.tr | 6F28AB2F3C918C13 |
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| ![ORCID](../images/orcidFav.png) DOÇENTKONYA TEKNİK ÜNİVERSİTESİ/MÜHENDİSLİK VE DOĞA BİLİMLERİ FAKÜLTESİ/ENDÜSTRİ MÜHENDİSLİĞİ BÖLÜMÜ/ENDÜSTRİ MÜHENDİSLİĞİ ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri Çok Kıstaslı Karar Verme ; Yöneylem Araştırması ; Optimizasyon ve Etkinlik Analizi | mebaysal[at]ktun.edu.tr | 67AE52A4B79D7954 |
32027 | ![AYDIN 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svhN4vikLNpa4P/AE8xf/FV3Xw28Ha/4c126mv7TyLWaL7wmRssCMcAk9C1FFLmdrCSR2ni7Tr7UNHuYLKISSvEyqN4XkjHU/WvKf8AhW/ihcf8S0DH/TxH/wDFUUVcKso7BKKe4f8ACuvE/fTAP+3iP/4qmP8ADzxNtJGmg9sefH0/76oorVVpsz5UI3w78TAAf2aMf9d4/wD4qo2+HniULk6d1/6eI/8A4qiij2kh8qPSvhnod/oek3kN/biGR59ygOrcbR6E0UUVzTepotj/2Q==) | ![ORCID](../images/orcidFav.png) ÖĞRETİM GÖREVLİSİADIYAMAN ÜNİVERSİTESİ/BESNİ ALİ ERDEMOĞLU MESLEK YÜKSEKOKULU/YÖNETİM VE ORGANİZASYON BÖLÜMÜ/İŞLETME YÖNETİMİ PR./ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri Optimizasyon ve Etkinlik Analizi ; Veri Analitiği ; İşletme İstatistiği | aozdemir[at]adiyaman.edu.tr | 2BA85C60753E69DF |