16290 | ![ALİ 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) | ![ORCID](../images/orcidFav.png) PROFESÖRTRAKYA ÜNİVERSİTESİ/KEŞAN YUSUF ÇAPRAZ UYGULAMALI BİLİMLER YÜKSEKOKULU/BANKACILIK VE SİGORTACILIK BÖLÜMÜ/BANKACILIK VE SİGORTACILIK ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri İşletme İstatistiği ; Çok Kıstaslı Karar Verme ; İstatistiksel Süreç Kontrol Teknikleri | alierdogan1975[at]gmail.com | 5DA0118E0EE7CF29 |
170827 | ![AYSUN KAPUÇUGİL 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) | ![ORCID](../images/orcidFav.png) PROFESÖRDOKUZ EYLÜL ÜNİVERSİTESİ/İŞLETME FAKÜLTESİ/İŞLETME BÖLÜMÜ/SAYISAL YÖNTEMLER ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri İşletme İstatistiği ; İstatistiksel Süreç Kontrol Teknikleri ; İş Analitiği | aysun.kapucugil[at]deu.edu.tr | C0751E63B3A2B841 |
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 |
226863 | ![AYŞEGÜL YILDIZ](../authorimages/photo_w.jpg) | ![ORCID](../images/orcidFav.png) DOKTOR ÖĞRETİM ÜYESİKÜTAHYA DUMLUPINAR 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 | aysegul.yildiz[at]dpu.edu.tr | A7B69FE529109913 |
24364 | ![BAHAR 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| ![ORCID](../images/orcidFav.png) PROFESÖRANADOLU ÜNİVERSİTESİ/AÇIKÖĞRETİM FAKÜLTESİ/İKTİSADİ VE İDARİ PROGRAMLAR BÖLÜMÜ/İKTİSADİ VE İDARİ PROGRAMLAR ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri İşletme İstatistiği ; İstatistiksel Süreç Kontrol Teknikleri ; Veri Analitiği | bdirem[at]anadolu.edu.tr | 37BCE6738145D8B4 |
136138 | ![BAYRAM 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) | ![ORCID](../images/orcidFav.png) PROFESÖRSAKARYA ÜNİVERSİTESİ/İŞLETME FAKÜLTESİ/İŞLETME BÖLÜMÜ/SAYISAL YÖNTEMLER ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri İstatistiksel Süreç Kontrol Teknikleri ; İşletme İstatistiği | | 6392A001F434D40D |
237912 | ![BURCU 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) | ![ORCID](../images/orcidFav.png) DOÇENTNUH NACİ YAZGAN ÜNİVERSİTESİ/İKTİSADİ VE İDARİ BİLİMLER FAKÜLTESİ/İŞLETME BÖLÜMÜ/İŞLETME PR. / Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri Çok Kıstaslı Karar Verme ; Veri Analitiği ; İstatistiksel Süreç Kontrol Teknikleri | boralhan[at]nny.edu.tr | 5F29D20037FC6133 |
133346 | ![CEREN YAMAN 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) | ![ORCID](../images/orcidFav.png) DOÇENTANKARA HACI BAYRAM VELİ ÜNİVERSİTESİ/İKTİSADİ VE İDARİ BİLİMLER FAKÜLTESİ/ADALET YÖNETİMİ BÖLÜMÜ/ADALET YÖNETİMİ ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri Çok Kıstaslı Karar Verme ; Yöneylem Araştırması ; İstatistiksel Süreç Kontrol Teknikleri | ceren.yaman[at]hbv.edu.tr | B88D28CF9FB05DDE |
40275 | ![EBUZER 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9qyfF9pcLNDIA/lhOAaADTLGbUriWG3G9hk49BW9P4Xlh8Lwaq8p+WYqsIPA5IrmvCOpNY60sEl59liuF2ySFcnHt6GvUtSuPDllarok12ywqolt8sTlsnkn6+tAHA3tzcPABDK6M2N6g46UVclhN0ZZoxvhRtpdRwTRQBza3E8TEJIy81ZtdYurVso+D61UlOJWHfNMLL6UAbR1uW8KIyFnU5PvWrFJbFQ8syHK/dI6Vi6JB507kEBtuAa2B4deVCMkE0AY3icWV7pzGMIjwjcpQdao+HvDVndWqXOo5YTcRxhiuB6n16VY8Taauj6aMyMXmO0AjjA61Q0nxJBBpkdlcsyMnCyAZAHb/CgDA17Shpd1GqklZFyQeqsDgj8KyTnI9q6TxJfwX4t2hlDlS24AYHbn8a5vqaAEOTSxExyq3pTsUhAoAnuD8hx3oj+UrmoQwYBWzgdDWtpOj3OrvcJbFP9Ht3uH3HHyr1x78igDvfCmv6r4huZoDPFGLG1aRGaHdnGBt6jsa0tC1a71jWDpc/zOqnDqq4GMZ4IP8AOs/wVolm+lTX+SJy0YX5u5Bzx+ArYW1FzdXEaFFd1PzxjawPsRQByl3rOlQXN3HJYyyzLIy5LKBkHHZcjpVdvE+nyKPP0x5nUYVnuRwPThatz+CnkmaRZCsbN8xlOW9zXJeINPTTdTkSCZri3yAk2zaGOBnuRwcjrQB1Y8dpBZtaQ2KrFnOBctjOfoKK4QxMHAIOSM0UAdVfG/BaUsgUHkqves+4vrhUQrMPMP8ACBXW3+gak8TW0C5llPzqOQB9fWqP/CGapAg22nJ6lj1oAx9NbWry5CWkwEnX0rXh8Q63p97HbavLLFEDg4XG4exq5Y+HNahkDRwiNxwNtaD+EPE+ojFzFFJDn+JhnHtQBW1zSbTxBYrc2epnfECfLk5z/hXnFzC1tO0cnUenevQLvwVqmjRNMh/dKMuC4BArkdZiUskquHOMNjtQBiu3GBUYGKkamGgBCaAtPWM7A5HBJFO2+1ADAoroPDsFyRPJBt27djZJzg/SsMKc9a9R+Hfgv+3fD15f/wBoXVsEmKbYSAGwoOT+dAGNoSXcS2rAywiIkMpRuf0q1o8l5pV9dTzrPOZTlUSNuTn1xxxWcy3cviMaXFf3LIzbVcv+dUp57gXUtrDNdXEoyBh+AR3PtQBvXH9p61dH7YXsbXd/qY1YsR9cVpavpGn/APCIM1pCyG3kAK7TzkHkk965LStD8Ua/JMmlQzXYi++6N8mfTcTgmuv8OeXH4W13S57e7j1aGNZbpLkY2hDn5R9KAOScR6h4rtYpseWIEQ/hFn+dFYs0obUHaTcQOPl68cUUAdF4hGoaYYpIruQrJwXDHk1qW19dL4YRLUzS3cvzNJIx4/3a1PF11o0WiWc1kguZXkV/3g4wOvFXfDGo6NqmnB9RjcXRYhlQ7RjtgelAGHodv/altOuo3lzHcqflMUhGPetjQLDWLWV45b431qp4jWQiQCt+3tdCt2Y21qRu6gnNXo5NPtX81LXaQMlgRkUAedeKppUv1aGSdrSQ5aFshiR1FYl9pzXtheaksP2UIAEt2ByV7n65xXoOt6k13PplyIEIjYyyNgA7CcDNJ4vcXdnBaRbW875l2kHuB2+tAHh71F3rU1ywbTdUntz0Vjj6Vnwp5kyL/eYCgDq30R/+ECW9CD9zMHd8dmO3H5kflXM4xXrGjQKPC2vaJcmEzCEvE7TfLyuRgeoNeTnmgBBjNe4fDzXbLw38OJZbuQRrcSysNx+82NuAP+AivEUGT3/CvTvCXh/T7rwxPqN08lxJGXWKFj8kfAOcevNAFe71vQ7I/bodPhupPlAZXKMCwO7JIP8AKuel8S2IZ/L0O2jD9QXzn68c01GSDxGxcfIu0ge2cUXWmQ6rqlysZEbIhK44B59O/WgDotL+K3iGCKKw0rTbRlVTthiic8D0CsK1l1rxTqdvqVzquhx2kT2Uga48p0fHHy/M2SOvauB8Pi+0zWbv7CcXcVsxU8ZHK5xnvgmttvGFzcWnlXSM4xgqJCAR70AcpYXl3Z6hNc2kcbyDIIeMOME+h4ordj1a2T5otPgVj1Oc0UAdffeDbd7e3jS9VQq4AKseDUNv4VgsuG1EZBwNsRoooA0BodomGbU5hnrtQ9Kuw6Fo5Rjc3l3cp02MMCiigBb+1tJZHEBOwwrEikYCqKgtdNsLaeF45H+0LgYx8oFFFAHnPxBi8rxLKhOWIDE/UVk+GYI7jxBaJIu5dxbHqQpI/UUUUAemrJa2qOsELq0gKuS+cj06V5NcoY7iRRxtYjFFFAEKkg5713PhnVpotBu4Q4EbPkcck4H+FFFAENvaLqOoq2QsyKdzt90DOegGTVuCS5huZUk8tgrbTgdPUiiigDH0+eSLxZdSR434YfMM9xXXaTYW/ia7udPu2WJhE8nmQxgNuUZ5OOR0oooA88ntdsuxTnHOT3zRRRQB/9k=) | ![ORCID](../images/orcidFav.png) DOKTOR ÖĞRETİM ÜYESİSİVAS CUMHURİYET ÜNİVERSİTESİ/YILDIZELİ MESLEK YÜKSEKOKULU/YÖNETİM VE ORGANİZASYON BÖLÜMÜ/SAĞLIK KURUMLARI İŞLETMECİLİĞİ PR./ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri İşletme İstatistiği ; İstatistiksel Süreç Kontrol Teknikleri ; Çok Kıstaslı Karar Verme | ebuzerarslan[at]gmail.com | DD17338787A3FC33 |
193671 | ![ERKAN ARI](data:image/jpg;base64,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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 |
5022 | ![ERKAN 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| ![ORCID](../images/orcidFav.png) PROFESÖRATATÜRK ÜNİVERSİTESİ/İKTİSADİ VE İDARİ BİLİMLER FAKÜLTESİ/EKONOMETRİ BÖLÜMÜ/İSTATİSTİK ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri İşletme İstatistiği ; Yöneylem Araştırması ; İstatistiksel Süreç Kontrol Teknikleri | erkanoktay[at]atauni.edu.tr | FC131E97D4118DFE |
150461 | ![ESİN 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) | ![ORCID](../images/orcidFav.png) DOKTOR ÖĞRETİM ÜYESİAYDIN ADNAN MENDERES ÜNİVERSİTESİ/NAZİLLİ İKTİSADİ VE İDARİ BİLİMLER FAKÜLTESİ/İŞLETME BÖLÜMÜ/SAYISAL YÖNTEMLER ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri İstatistiksel Süreç Kontrol Teknikleri ; Yöneylem Araştırması ; Çok Kıstaslı Karar Verme | | FC54CCC48733FD05 |
102583 | ![ESRA AKAYDIN GÜLTÜRK](../authorimages/photo_w.jpg) | ![ORCID](../images/orcidFav.png) DOKTOR ÖĞRETİM ÜYESİSİVAS CUMHURİYET ÜNİVERSİTESİ/TIP FAKÜLTESİ/TEMEL TIP BİLİMLERİ BÖLÜMÜ/BİYOİSTATİSTİK ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri Veri Analitiği ; İstatistiksel Süreç Kontrol Teknikleri ; Optimizasyon ve Etkinlik Analizi | esra0709.eg[at]gmail.com | 912C4FBEF73EF4DC |
236834 | ![ESRA AYDIN ÜNAL](../authorimages/photo_w.jpg) | ![ORCID](../images/orcidFav.png) DOKTOR ÖĞRETİM ÜYESİSİVAS CUMHURİYET ÜNİVERSİTESİ/ZARA VEYSEL DURSUN UYGULAMALI BİLİMLER YÜKSEKOKULU/SİGORTACILIK BÖLÜMÜ/SİGORTACILIK ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri Çok Kıstaslı Karar Verme ; İstatistiksel Süreç Kontrol Teknikleri ; Veri Analitiği | eaunal[at]cumhuriyet.edu.tr | 3CB03A11FAFE559D |
46262 | ![GÜLSEN SERAP 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h+Iz+lWY/EF/pMP2G2cQmJmLyR8F89M+vFFFSO7NW38ZalBbiWV1lkkbbGGHXHUk1n+I/E19PdyWyyeWkfysE4ye/60UVDirl+0lbc5GWZnPJqLOFzRRVmZCpzzT0HziiihgWVOBmlRti5/iaiimIsQ56nrRRRUgf/Z) | ![ORCID](../images/orcidFav.png) PROFESÖRESKİŞEHİR TEKNİK ÜNİVERSİTESİ/ULAŞTIRMA MESLEK YÜKSEKOKULU/YÖNETİM VE ORGANİZASYON BÖLÜMÜ/LOJİSTİK PR./ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri İstatistiksel Süreç Kontrol Teknikleri ; Çok Kıstaslı Karar Verme ; Yöneylem Araştırması | gscekerol[at]eskisehir.edu.tr | 1446403F16D4484D |
39132 | ![HAKAN 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) | ![ORCID](../images/orcidFav.png) PROFESÖRMARMARA ÜNİVERSİTESİ/İŞLETME FAKÜLTESİ/İŞLETME BÖLÜMÜ/SAYISAL YÖNTEMLER ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri İşletme İstatistiği ; İstatistiksel Süreç Kontrol Teknikleri | hakany68[at]marmara.edu.tr | CA32F26AB4D5FB3B |
167536 | ![HAKAN TAHİRİ 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) | ![ORCID](../images/orcidFav.png) DOÇENTBOLU ABANT İZZET BAYSAL ÜNİVERSİTESİ/İKTİSADİ VE İDARİ BİLİMLER FAKÜLTESİ/İŞLETME BÖLÜMÜ/SAYISAL YÖNTEMLER ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri İstatistiksel Süreç Kontrol Teknikleri ; İşletme İstatistiği ; Veri Analitiği | tahirimutlu[at]ibu.edu.tr | A4A4F074C2777D9E |
321223 | ![HASAN 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) | ![ORCID](../images/orcidFav.png) ARAŞTIRMA GÖREVLİSİİSTANBUL MEDENİYET ÜNİVERSİTESİ/SİYASAL BİLGİLER FAKÜLTESİ/İŞLETME BÖLÜMÜ/SAYISAL YÖNTEMLER ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri Veri Analitiği ; İstatistiksel Süreç Kontrol Teknikleri ; Optimizasyon ve Etkinlik Analizi | hasan.senguler[at]medeniyet.edu.tr | 06167878A8A7B012 |
183539 | ![HATİCE ŞAMKAR](../authorimages/photo_w.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 ; İşletme İstatistiği ; İstatistiksel Süreç Kontrol Teknikleri | hfidan[at]ogu.edu.tr | 01884BA92E878914 |
33729 | ![HAYRİYE ESRA 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qW5uJYd7iFLI4G4kD5hwB+ArzBv4/evQ9alVZtQlLdbYKBjn0rzw967aZyVDofCdilzN56yBZojyhGQy//rr0GCWaJRwowemc8fpXnXhKcQ3rFuh4r0FJFYVFSCbuzSlNqOhZl8QS2ELyKifKOrZwK838S+JdW1Rj9ouCsOfkjHA+uK63WCv2Ry2Ni/Mfwrza+ma4uC7/AID0p0oJdBVptrcggiMjqO7Gun0+KMP5rZ4zswOcnAH6ZP4VhWsZDBjx2H411fhiM32rwoQfKUlzxnAArZmVNGlqEIGr6dEynKJgL6Fj/QCvRNIsympLegDEsADt/tKR/Q/oa4+XTLi88RJcKpeKNst9cgdfpgY//VXd6Xu+xzoUwyAjGOchv8BWFQ6YvRsXOXP1qVTVVXyxPvU6GoRiywpopqmiqIPKfh2f+KH03283/wBGPXUKeFFcn8PyR4G07/tr/wCjHrqFOSPc4rkmvffqd9N+4vQfv8uzRR1CD+VVZ33bApwSB+NSXUu0EkZX2/z+FV9PUyfNISAo2jPUjJx+ddMVZHM3dmRrVjLNZ3TRx/vJDhVI/hBBz7Z/kO+a4GezliyGRl78ivY5IVx90D2x0rFu9PiuLuKNkDABn6d+AP5n8quMrCaucz4Z0gSoZXDKc8EV1yW7RjBdSPepbSzS0t1iTsMZ9ac6Bjg0nK7GlZGPqjRi0k81wRjG0HJJrzmZS1y49DXpNzClzO8eMxRdeOC3/wBb+tcDqESxX8yJhgHxxWkGZzVyBAeEQEt2xXo/hHTGtLIvtLzTYwQM4Xuf6D6dq4fTLKWW7jwp6j8a9r8P6WrxrnIGMcDinJ9EVBWXMx8Gnu0YjSMqRgk4roLCAq+xlPzdz05HT+f51at9LUgLklT2NakdoqRhM5A7HtS5bkyqnEOpineM9VOOamRqu+ILe3t7xJnlMJlBOSuVJHXpz09jVIQyKpcYdByWQ5AHv6fjWbi0x6tXJ0aio0aikQeX/D3Tr268D6dJDvMZEuACo/5av611X9nXVuBLcBlAPGWHJP0/Gl+Ece74YaOcf89v/R0laviGbEiQr1UZP40pQXM2aRqvlUTnbl+u7jjvVG2lw6WsSDmTe5ByNuOvt0x+XrU13JgHNN0eyYiW6kUAS4VARzgdT9CcflVIT3NUShh6cVTyqajNJu/5ZRgL6HLZP6irbRDFUUhP2mbJyAwA/IGkUTGQnIA+lVLm4dIsRpuZvlA9/f27/hWh5XHABqBLVJZvNcgqvyqP5nP6fh70DK1taLHCN5JUEn5urE8np71jPoENxdvcMBgndg/T/GujuXJUKvA9u1M2jMKY4ZiT+AppgQ6JoqWzh5ADwAAB1PtXa2NyE+UsSAPupxge5rBiz06Ejnb29hWnbFkXapCg47ZP50r6g9UddY3DbULhQSOgJNa6tuHUZ9q5izSZgMXcuThRn8/8a3YPtC4PmLIvTldproizlktTB8cqo0qGRjgiTaPxBJ/Ra4ODUrm1bMMzqPZiK73x1G0vhqR1HMMiuR3x93/2avMd+QaznuengrOnZnTW3iDzB++hMhHUoQHH8gf0PuelFcoZMMCD070UjR0IXOp+Dy5+FmjH/rv/AOj5Kr6vdG5v5pRyC3y9uBwP0oopT3PMgZEUAu7xYy37sAs/J5Xjj9a2vlVQq8AcAAdBRRUs0GNiqML5uLleflkH/oK/40UUDQ66uHhhJUZc4VfqeB+tLD8sEaAsQqgAsckgDvRRTERSnLe9OjblOOmR/n8qKKALsMmNx98k+ntWhbTM5BWMN/vMRz+FFFLqN7G5ZC8VA6JD0LDJPWtu2u3TEckIQDAGxsj9aKK2ic8y1f2qX+n3Fq/3Zo2TOOmR1rwlWIXnrRRRUOvAt+8iN3KniiiioPQP/9k=) | ![ORCID](../images/orcidFav.png) DOKTOR ÖĞRETİM ÜYESİ (Unvan:Doçent) BİTLİS EREN ÜNİVERSİTESİ/FEN-EDEBİYAT FAKÜLTESİ/İSTATİSTİK BÖLÜMÜ/İSTATİSTİKSEL BİLGİ SİSTEMLERİ ANABİLİM DALI/ Sosyal-Beşeri ve İdari Bilimler Temel Alanı Nicel Karar Yöntemleri Veri Analitiği ; İstatistiksel Süreç Kontrol Teknikleri | heakyuz[at]beu.edu.tr | CF1F05D40C6D03C8 |