244014 | ![KADİR SARIKAYA](../authorimages/photo_m.jpg) | ![ORCID](../images/orcidFav.png) DOKTOR ÖĞRETİM ÜYESİTOKAT GAZİOSMANPAŞA ÜNİVERSİTESİ/MÜHENDİSLİK VE MİMARLIK FAKÜLTESİ/ENDÜSTRİ MÜHENDİSLİĞİ BÖLÜMÜ/YÖNEYLEM ARAŞTIRMASI ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri Yöneylem Araştırması ; Çok Kıstaslı Karar Verme | | 69F5D9C1896BAA75 |
45469 | ![BURCU ADIGÜZEL MERCANGÖZ](data:image/jpg;base64,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) | ![ORCID](../images/orcidFav.png) PROFESÖRİSTANBUL ÜNİVERSİTESİ/ULAŞTIRMA VE LOJİSTİK FAKÜLTESİ/LOJİSTİK YÖNETİMİ BÖLÜMÜ/LOJİSTİK ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri Çok Kıstaslı Karar Verme | burcua[at]istanbul.edu.tr | 7E235CA24B6A5D0D |
163965 | ![AKIN ÖZKAN](data:image/jpg;base64,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) | ![ORCID](../images/orcidFav.png) DOKTOR ÖĞRETİM ÜYESİMUŞ ALPARSLAN ÜNİVERSİTESİ/İKTİSADİ VE İDARİ BİLİMLER FAKÜLTESİ/İŞLETME BÖLÜMÜ/SAYISAL YÖNTEMLER ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri Yöneylem Araştırması ; Sezgisel ve Metasezgisel Teknikler ; Çok Kıstaslı Karar Verme | | E452752E6092931A |
25054 | ![AYŞE ELİF YAZGAN](data:image/jpg;base64,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) | ![ORCID](../images/orcidFav.png) DOÇENTNECMETTİN ERBAKAN ÜNİVERSİTESİ/UYGULAMALI BİLİMLER FAKÜLTESİ/FİNANS VE BANKACILIK BÖLÜMÜ/FİNANS VE BANKACILIK ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri Yöneylem Araştırması ; Çok Kıstaslı Karar Verme ; İşletme İstatistiği | aelifyazgan[at]gmail.com | BDB8EF37E69033B3 |
215855 | ![REHİLE ASKERBEYLİ](../authorimages/photo_w.jpg) | ![ORCID](../images/orcidFav.png) PROFESÖRKARABÜK ÜNİVERSİTESİ/İŞLETME FAKÜLTESİ/İŞLETME BÖLÜMÜ/SAYISAL YÖNTEMLER ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri İstatistiksel Analiz Ve Uygulamalar ; Karar Destek Sistemleri ; Çok Kıstaslı Karar Verme | | 6168D4F8EA00790B |
283953 | ![YUNUS YILDIRIM](data:image/jpg;base64,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) | ![ORCID](../images/orcidFav.png) ARAŞTIRMA GÖREVLİSİAFYON KOCATEPE ÜNİVERSİTESİ/İKTİSADİ VE İDARİ BİLİMLER FAKÜLTESİ/İŞLETME BÖLÜMÜ/SAYISAL YÖNTEMLER ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri Yöneylem Araştırması ; Yönetsel Karar Verme Teknikleri ; Optimizasyon ve Etkinlik Analizi | yunusyildirim[at]aku.edu.tr | 710B37CB7B9C2380 |
205901 | ![HALİME ARSLAN GÜRDAL](data:image/jpg;base64,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) | ![ORCID](../images/orcidFav.png) ARAŞTIRMA GÖREVLİSİESKİŞEHİR OSMANGAZİ ÜNİVERSİTESİ/İKTİSADİ VE İDARİ BİLİMLER FAKÜLTESİ/İŞLETME BÖLÜMÜ/SAYISAL YÖNTEMLER ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri | halarslan87[at]hotmail.com | AF584F4A3A6EB7AA |
174829 | ![SERPİL KILIÇ DEPREN](../authorimages/photo_w.jpg) | ![ORCID](../images/orcidFav.png) DOÇENTYILDIZ TEKNİK ÜNİVERSİTESİ/FEN-EDEBİYAT FAKÜLTESİ/İSTATİSTİK BÖLÜMÜ/İSTATİSTİK ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri İstatistiksel Analiz Ve Uygulamalar | serkilic[at]yildiz.edu.tr | B3BAAE71099DD913 |
14385 | ![HARUN ÖZTÜRK](data:image/jpg;base64,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) | ![ORCID](../images/orcidFav.png) DOÇENTSÜLEYMAN DEMİREL ÜNİVERSİTESİ/İKTİSADİ VE İDARİ BİLİMLER FAKÜLTESİ/İŞLETME BÖLÜMÜ/SAYISAL YÖNTEMLER ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri Yöneylem Araştırması | harunozturk[at]sdu.edu.tr | 2685927BFFD38D4B |
119424 | ![KADİR KIRDA](data:image/jpg;base64,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) | ![ORCID](../images/orcidFav.png) DOKTOR ÖĞRETİM ÜYESİARTVİN ÇORUH ÜNİVERSİTESİ/HOPA 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 ; İstatistiksel Analiz Ve Uygulamalar | kadirkirda[at]artvin.edu.tr | 37E4D53A1DE0F774 |
20044 | ![FATMA LORCU](../authorimages/photo_w.jpg) | ![ORCID](../images/orcidFav.png) PROFESÖRTRAKYA 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 ; İstatistiksel Analiz Ve Uygulamalar | fatmalorcu[at]trakya.edu.tr | 3A6B8602B01684EB |
355827 | ![BESTE DESTİCİOĞLU TAŞDEMİR](data:image/jpg;base64,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) | ![ORCID](../images/orcidFav.png) DOKTOR ÖĞRETİM ÜYESİ (Unvan:Doçent) MİLLİ SAVUNMA ÜNİVERSİTESİ/ALPARSLAN SAVUNMA BİLİMLERİ VE MİLLİ GÜVENLİK ENSTİTÜSÜ/HAREKÂT ARAŞTIRMASI ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri Yöneylem Araştırması ; Çok Kıstaslı Karar Verme ; Optimizasyon ve Etkinlik Analizi | bdesticioglu[at]kho.msu.edu.tr | 2F7A1736526461E4 |
59973 | ![MURAT KAYA](../authorimages/photo_m.jpg) | ÖĞRETİM GÖREVLİSİSİVAS CUMHURİYET ÜNİVERSİTESİ/DİVRİĞİ NURİ DEMİRAĞ MESLEK YÜKSEKOKULU/YÖNETİM VE ORGANİZASYON BÖLÜMÜ/LOJİSTİK PR./ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri İstatistiksel Analiz Ve Uygulamalar | | 828A61571758A7A7 |
310711 | ![YASEMİN EKER](../authorimages/photo_w.jpg) | ![ORCID](../images/orcidFav.png) ÖĞRETİM GÖREVLİSİYALOVA ÜNİVERSİTESİ/REKTÖRLÜK/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri Zaman Serileri Analizi ; Karar Destek Sistemleri ; İstatistiksel Analiz Ve Uygulamalar | yaseminkorkut[at]outlook.com | A39625F75FF58158 |
282142 | ![GENCAY TEPE](data:image/jpg;base64,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) | ![ORCID](../images/orcidFav.png) ARAŞTIRMA GÖREVLİSİMANİSA CELÂL BAYAR ÜNİVERSİTESİ/İŞLETME FAKÜLTESİ/İŞLETME BÖLÜMÜ/SAYISAL YÖNTEMLER ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri Yöneylem Araştırması | gencay.tepe[at]cbu.edu.tr | 4D02A7DB782141D9 |
178669 | ![CAN AKKAN](../authorimages/photo_m.jpg) | ![ORCID](../images/orcidFav.png) PROFESÖRSABANCI ÜNİVERSİTESİ/YÖNETİM BİLİMLERİ FAKÜLTESİ/YÖNETİM BİLİMLERİ BÖLÜMÜ/YÖNETİM BİLİMLERİ PR. / Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri Yöneylem Araştırması ; İş Analitiği | | 72DF0677018610CD |
248948 | ![ŞÜKRÜ UFUK ULADİ](data:image/jpg;base64,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) | ![ORCID](../images/orcidFav.png) ARAŞTIRMA GÖREVLİSİOSMANİYE KORKUT ATA ÜNİVERSİTESİ/İKTİSADİ VE İDARİ BİLİMLER FAKÜLTESİ/İŞLETME BÖLÜMÜ/SAYISAL YÖNTEMLER ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri | ufukuladi[at]osmaniye.edu.tr | CB472630E0027C34 |
57320 | ![KÜBRA GÜLNAZ BÜLBÜL](../authorimages/photo_w.jpg) | ![ORCID](../images/orcidFav.png) DOKTOR ÖĞRETİM ÜYESİESKİŞEHİR TEKNİK ÜNİVERSİTESİ/HAVACILIK VE UZAY BİLİMLERİ FAKÜLTESİ/PİLOTAJ BÖLÜMÜ/PİLOTAJ ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri Yöneylem Araştırması | kgbulbul[at]eskisehir.edu.tr | 427F967160E6B181 |
156194 | ![ALİYE ATAY](../authorimages/photo_w.jpg) | ![ORCID](../images/orcidFav.png) DOKTOR ÖĞRETİM ÜYESİ (Unvan:Doçent) TÜRK HAVA KURUMU ÜNİVERSİTESİ/İŞLETME FAKÜLTESİ/YÖNETİM BİLİŞİM SİSTEMLERİ BÖLÜMÜ/YÖNETİM BİLİŞİM SİSTEMLERİ PR. / Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri İstatistiksel Analiz Ve Uygulamalar ; Zaman Serileri Analizi ; Çok Kıstaslı Karar Verme | aatay[at]thk.edu.tr | 804C4EFE0335A232 |
56509 | ![MEHMET EMİN BAYSAL](data:image/jpg;base64,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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 |