129950 | ![EBRU ÖZGÜR 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| ![ORCID](../images/orcidFav.png) PROFESÖRÇUKUROVA ÜNİVERSİTESİ/İKTİSADİ VE İDARİ BİLİMLER FAKÜLTESİ/EKONOMETRİ BÖLÜMÜ/İSTATİSTİK ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri Çok Kıstaslı Karar Verme ; İşletme İstatistiği ; Veri Analitiği | ozgurebru[at]cu.edu.tr | 65AD698D8407C924 |
193671 | ![ERKAN 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) | ![ORCID](../images/orcidFav.png) PROFESÖRKÜTAHYA DUMLUPINAR ÜNİVERSİTESİ/İKTİSADİ VE İDARİ BİLİMLER FAKÜLTESİ/EKONOMETRİ BÖLÜMÜ/İSTATİSTİK ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri İşletme İstatistiği ; İstatistiksel Süreç Kontrol Teknikleri ; Veri Analitiği | erkan.ari[at]dpu.edu.tr | E8E577E9A541BE6C |
149248 | ![ATİLA 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| ![ORCID](../images/orcidFav.png) PROFESÖRMUĞLA SITKI KOÇMAN ÜNİVERSİTESİ/FEN FAKÜLTESİ/İSTATİSTİK BÖLÜMÜ/İSTATİSTİK BİLGİ SİSTEMLERİ ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri Veri Analitiği ; İşletme İstatistiği ; Çok Kıstaslı Karar Verme | gatilla[at]mu.edu.tr | 0CCF7172AA7F005E |
18345 | ![DURSUN 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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 |
147248 | ![ADİL OĞUZHAN](../authorimages/photo_m.jpg) | ![ORCID](../images/orcidFav.png) PROFESÖRTRAKYA ÜNİVERSİTESİ/İKTİSADİ VE İDARİ BİLİMLER FAKÜLTESİ/EKONOMETRİ BÖLÜMÜ/İSTATİSTİK ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri İşletme İstatistiği ; Veri Analitiği | adiloguzhan[at]trakya.edu.tr | EF41C8C9B898262E |
55210 | ![NİZAMETTİN BAYYURT](../authorimages/photo_m.jpg) | ![ORCID](../images/orcidFav.png) PROFESÖRİSTANBUL TEKNİK ÜNİVERSİTESİ/İŞLETME FAKÜLTESİ/ENDÜSTRİ MÜHENDİSLİĞİ BÖLÜMÜ/ENDÜSTRİ MÜHENDİSLİĞİ ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri Veri Analitiği ; Yöneylem Araştırması ; İşletme İstatistiği | bayyurt[at]itu.edu.tr | FB78B63D1A9A32F3 |
157836 | ![ERKAN 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) | ![ORCID](../images/orcidFav.png) PROFESÖRBURSA ULUDAĞ ÜNİVERSİTESİ/İKTİSADİ VE İDARİ BİLİMLER FAKÜLTESİ/EKONOMETRİ BÖLÜMÜ/İSTATİSTİK ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri İş Analitiği ; İşletme İstatistiği ; Veri Analitiği | eris[at]uludag.edu.tr | 144ECE6C37416577 |
28388 | ![AYŞE OĞUZLAR](../authorimages/photo_w.jpg) | ![ORCID](../images/orcidFav.png) PROFESÖRBURSA ULUDAĞ ÜNİVERSİTESİ/İKTİSADİ VE İDARİ BİLİMLER FAKÜLTESİ/EKONOMETRİ BÖLÜMÜ/İSTATİSTİK ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri İşletme İstatistiği ; Veri Analitiği ; İstatistiksel Süreç Kontrol Teknikleri | ayseog[at]uludag.edu.tr | 2E1D90798F20A0FD |
157840 | ![NURAN BAYRAM 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| ![ORCID](../images/orcidFav.png) PROFESÖRBURSA ULUDAĞ ÜNİVERSİTESİ/İKTİSADİ VE İDARİ BİLİMLER FAKÜLTESİ/EKONOMETRİ BÖLÜMÜ/İSTATİSTİK ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri Veri Analitiği | nuranb[at]uludag.edu.tr | 4A0DC3506FF3C1E7 |
122820 | ![SEVDA GÜRSAKAL](../authorimages/photo_w.jpg) | ![ORCID](../images/orcidFav.png) PROFESÖRBURSA ULUDAĞ ÜNİVERSİTESİ/İKTİSADİ VE İDARİ BİLİMLER FAKÜLTESİ/EKONOMETRİ BÖLÜMÜ/İSTATİSTİK ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri Veri Analitiği | sdalgic[at]uludag.edu.tr | C4C4E84D9251C38D |
157838 | ![ZEHRA BERNA 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E5FFFcb2OuO5MxB5HbimLcuh5PFFFYnQW47ncByatRSjOaKKBoVpz2pvn45ooplCC7PapFuGNFFA3sTq/7s5PJrRsLNZIt7ck0UVSOeZLJp6jkUR6d5jDd09KKKtGDLw0i3GMLg1Ols6jajcUUVrHYhiqsgJBPSiiimI//9k=) | ![ORCID](../images/orcidFav.png) PROFESÖRBURSA ULUDAĞ ÜNİVERSİTESİ/İKTİSADİ VE İDARİ BİLİMLER FAKÜLTESİ/EKONOMETRİ BÖLÜMÜ/İSTATİSTİK ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri İstatistiksel Süreç Kontrol Teknikleri ; Veri Analitiği ; İşletme İstatistiği | berna[at]uludag.edu.tr | 3AAC3796BDCC317D |
177006 | ![SEMA ULUTÜRK AKMAN](../authorimages/photo_w.jpg) | ![ORCID](../images/orcidFav.png) PROFESÖRİSTANBUL ÜNİVERSİTESİ/İKTİSAT FAKÜLTESİ/EKONOMETRİ BÖLÜMÜ/İSTATİSTİK ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri İşletme İstatistiği ; Veri Analitiği | | E49E6B5802D9B14C |
2071 | ![ALİ KARUN NEMLİOĞLU](../authorimages/photo_m.jpg) | PROFESÖRİSTANBUL ÜNİVERSİTESİ/İKTİSAT FAKÜLTESİ/EKONOMETRİ BÖLÜMÜ/İSTATİSTİK ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri İşletme İstatistiği ; Veri Analitiği | | DBBC55D6B2EA597E |
176299 | ![UMMAN TUĞBA GÜRSOY](../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 ; Veri Analitiği ; Çok Kıstaslı Karar Verme | tugbasim[at]istanbul.edu.tr | CAFFE053641FDCEB |
203398 | ![ÇİĞDEM ARICIGİL ÇİLAN](../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 İşletme İstatistiği ; Veri Analitiği ; Yönetsel Karar Verme Teknikleri | ccilan[at]istanbul.edu.tr | 972B4DE01D4F3002 |
177007 | ![ÖZLEM YORULMAZ](../authorimages/photo_w.jpg) | ![ORCID](../images/orcidFav.png) PROFESÖRİSTANBUL ÜNİVERSİTESİ/İKTİSAT FAKÜLTESİ/EKONOMETRİ BÖLÜMÜ/İSTATİSTİK ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri Veri Analitiği ; İşletme İstatistiği | yorulmaz[at]istanbul.edu.tr | 767419E91071B5AC |
176922 | ![MUSTAFA 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) | ![ORCID](../images/orcidFav.png) PROFESÖRİSTANBUL ÜNİVERSİTESİ/İKTİSAT FAKÜLTESİ/EKONOMETRİ BÖLÜMÜ/YÖNEYLEM ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri İşletme İstatistiği ; İş Analitiği ; Veri Analitiği | | 1D0289E903BF95D8 |
177005 | ![MELDA AKIN](../authorimages/photo_w.jpg) | PROFESÖRİSTANBUL ÜNİVERSİTESİ/İKTİSAT FAKÜLTESİ/EKONOMETRİ BÖLÜMÜ/İSTATİSTİK ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri İşletme İstatistiği ; Veri Analitiği | akin01[at]istanbul.edu.tr | 1762A576603110C6 |
176392 | ![BİLGE ACAR BOLAT](../authorimages/photo_w.jpg) | PROFESÖRİSTANBUL ÜNİVERSİTESİ/İŞLETME FAKÜLTESİ/İŞLETME BÖLÜMÜ/SAYISAL YÖNTEMLER ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri İşletme İstatistiği ; Veri Analitiği | bacar[at]istanbul.edu.tr | C6242888516DC296 |
6641 | ![ŞAHAP ARMAĞAN TARIM](../authorimages/photo_m.jpg) | ![ORCID](../images/orcidFav.png) PROFESÖRHACETTEPE ÜNİVERSİTESİ/BİLİŞİM ENSTİTÜSÜ/BİLİŞİM SİSTEMLERİ ANABİLİM DALI / Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri Veri Analitiği ; Yöneylem Araştırması ; İş Analitiği | armagan.tarim[at]hacettepe.edu.tr | 2823959B61F1EB04 |