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Proje Grubu: MAG Sayfa Sayısı: 89 Proje No: 105M138 Proje Bitiş Tarihi: 30.06.2009 Metin Dili: Türkçe İndeks Tarihi: 29-07-2022

Kalite iyileştirmede veri madenciliği kullanımı ve geliştirilmesi

Öz:
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Anahtar Kelime:

Konular: Endüstri Mühendisliği
Erişim Türü: Erişime Açık
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APA KÖKSAL G, BATMAZ İ, Karasözen B, KAYALIGİL S, TESTİK M, ÖZDEMİREL N, WEBER G, BAKIR B, GÜNTÜRKÜN F, İPEKÇİ İ, ÖZTÜRK B, YERLİKAYA F (2009). Kalite iyileştirmede veri madenciliği kullanımı ve geliştirilmesi. , 1 - 89.
Chicago KÖKSAL Gülser,BATMAZ İnci,Karasözen Bülent,KAYALIGİL Sinan,TESTİK Murat Caner,ÖZDEMİREL Nur Evin,WEBER Gerhard Wilhelm,BAKIR Berna,GÜNTÜRKÜN Fatma,İPEKÇİ İlker Arif,ÖZTÜRK Başak,YERLİKAYA Fatma Kalite iyileştirmede veri madenciliği kullanımı ve geliştirilmesi. (2009): 1 - 89.
MLA KÖKSAL Gülser,BATMAZ İnci,Karasözen Bülent,KAYALIGİL Sinan,TESTİK Murat Caner,ÖZDEMİREL Nur Evin,WEBER Gerhard Wilhelm,BAKIR Berna,GÜNTÜRKÜN Fatma,İPEKÇİ İlker Arif,ÖZTÜRK Başak,YERLİKAYA Fatma Kalite iyileştirmede veri madenciliği kullanımı ve geliştirilmesi. , 2009, ss.1 - 89.
AMA KÖKSAL G,BATMAZ İ,Karasözen B,KAYALIGİL S,TESTİK M,ÖZDEMİREL N,WEBER G,BAKIR B,GÜNTÜRKÜN F,İPEKÇİ İ,ÖZTÜRK B,YERLİKAYA F Kalite iyileştirmede veri madenciliği kullanımı ve geliştirilmesi. . 2009; 1 - 89.
Vancouver KÖKSAL G,BATMAZ İ,Karasözen B,KAYALIGİL S,TESTİK M,ÖZDEMİREL N,WEBER G,BAKIR B,GÜNTÜRKÜN F,İPEKÇİ İ,ÖZTÜRK B,YERLİKAYA F Kalite iyileştirmede veri madenciliği kullanımı ve geliştirilmesi. . 2009; 1 - 89.
IEEE KÖKSAL G,BATMAZ İ,Karasözen B,KAYALIGİL S,TESTİK M,ÖZDEMİREL N,WEBER G,BAKIR B,GÜNTÜRKÜN F,İPEKÇİ İ,ÖZTÜRK B,YERLİKAYA F "Kalite iyileştirmede veri madenciliği kullanımı ve geliştirilmesi." , ss.1 - 89, 2009.
ISNAD KÖKSAL, Gülser vd. "Kalite iyileştirmede veri madenciliği kullanımı ve geliştirilmesi". (2009), 1-89.
APA KÖKSAL G, BATMAZ İ, Karasözen B, KAYALIGİL S, TESTİK M, ÖZDEMİREL N, WEBER G, BAKIR B, GÜNTÜRKÜN F, İPEKÇİ İ, ÖZTÜRK B, YERLİKAYA F (2009). Kalite iyileştirmede veri madenciliği kullanımı ve geliştirilmesi. , 1 - 89.
Chicago KÖKSAL Gülser,BATMAZ İnci,Karasözen Bülent,KAYALIGİL Sinan,TESTİK Murat Caner,ÖZDEMİREL Nur Evin,WEBER Gerhard Wilhelm,BAKIR Berna,GÜNTÜRKÜN Fatma,İPEKÇİ İlker Arif,ÖZTÜRK Başak,YERLİKAYA Fatma Kalite iyileştirmede veri madenciliği kullanımı ve geliştirilmesi. (2009): 1 - 89.
MLA KÖKSAL Gülser,BATMAZ İnci,Karasözen Bülent,KAYALIGİL Sinan,TESTİK Murat Caner,ÖZDEMİREL Nur Evin,WEBER Gerhard Wilhelm,BAKIR Berna,GÜNTÜRKÜN Fatma,İPEKÇİ İlker Arif,ÖZTÜRK Başak,YERLİKAYA Fatma Kalite iyileştirmede veri madenciliği kullanımı ve geliştirilmesi. , 2009, ss.1 - 89.
AMA KÖKSAL G,BATMAZ İ,Karasözen B,KAYALIGİL S,TESTİK M,ÖZDEMİREL N,WEBER G,BAKIR B,GÜNTÜRKÜN F,İPEKÇİ İ,ÖZTÜRK B,YERLİKAYA F Kalite iyileştirmede veri madenciliği kullanımı ve geliştirilmesi. . 2009; 1 - 89.
Vancouver KÖKSAL G,BATMAZ İ,Karasözen B,KAYALIGİL S,TESTİK M,ÖZDEMİREL N,WEBER G,BAKIR B,GÜNTÜRKÜN F,İPEKÇİ İ,ÖZTÜRK B,YERLİKAYA F Kalite iyileştirmede veri madenciliği kullanımı ve geliştirilmesi. . 2009; 1 - 89.
IEEE KÖKSAL G,BATMAZ İ,Karasözen B,KAYALIGİL S,TESTİK M,ÖZDEMİREL N,WEBER G,BAKIR B,GÜNTÜRKÜN F,İPEKÇİ İ,ÖZTÜRK B,YERLİKAYA F "Kalite iyileştirmede veri madenciliği kullanımı ve geliştirilmesi." , ss.1 - 89, 2009.
ISNAD KÖKSAL, Gülser vd. "Kalite iyileştirmede veri madenciliği kullanımı ve geliştirilmesi". (2009), 1-89.