Yıl: 2019 Cilt: 0 Sayı: 43 Sayfa Aralığı: 21 - 34 Metin Dili: Türkçe İndeks Tarihi: 22-02-2021

ROTASYON ORMAN SINIFLANDIRMA ALGORİTMASI KULLANARAK KRONİK BÖBREK RAHATSIZLIĞININ TAHMİNİ

Öz:
Kronik böbrek rahatsızlığı (KBR) son günlerde artarak insanların yaşamını olumsuz etkileyen veböbreklere zarar vererek normal görevlerini uzun süre yapmalarını engelleyen bir rahatsızlıktır.KBR'nin erken tanı ve tedavisi yapılmaz ise yüksek tansiyon, kalp rahatsızlığı, şeker rahatsızlığı,böbrek yetmezliği gibi hastalıkları da tetikleyebilmekte ve rahatsızlığa bağlı ölümler artabilmektedir.Bu nedenle kronik böbrek rahatsızlığının teşhis ve tahmininin erken yapılması önemlidir. LiteratürdeKBR tahmini için sezgisel ve sezgisel olmayan veri madenciliği teknikleri uygulanmıştır. Buçalışmada KBR'nin tahmini için sezgisel olmayan kolektif veri madenciliği yöntemlerinden olanrotasyon orman algoritmasınının kullanılması önerilmiştir. Deneysel sonuçlar önerilen yaklaşımın,kronik böbrek rahatsızlığını tahmin etmede, diğer algoritmalarından daha iyi performans sergilediğinigöstermiştir.
Anahtar Kelime:

PREDICTION OF CHRONIC KIDNEY DISEASE USING ROTATION FOREST CLASSIFICATION ALGORITHM

Öz:
Chronic kidney disease (CBR) has increased in recent years by affecting the lives of people adversely. It affects kidneys and prevents them doing their normal duties properly. Without early diagnosis and treatment of CBR, it can trigger diseases such as high blood pressure, heart disease, diabetes mellitus and kidney failure and it can even cause deaths. For this reason, it is important to diagnose and predict CBR early. In the literature, various heuristic and non-heuristic data mining classification techniques have been applied on predicting CBR. In this study, it is proposed to use the rotation forest algorithm as a non-heuristic collective data mining method for predicting CBR. Experimental evaluations show that the proposed approach performs better than other algorithms on predicting CBR.
Anahtar Kelime:

Belge Türü: Makale Makale Türü: Araştırma Makalesi Erişim Türü: Erişime Açık
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APA KILIÇARSLAN S, Celik M (2019). ROTASYON ORMAN SINIFLANDIRMA ALGORİTMASI KULLANARAK KRONİK BÖBREK RAHATSIZLIĞININ TAHMİNİ. , 21 - 34.
Chicago KILIÇARSLAN Serhat,Celik Mete ROTASYON ORMAN SINIFLANDIRMA ALGORİTMASI KULLANARAK KRONİK BÖBREK RAHATSIZLIĞININ TAHMİNİ. (2019): 21 - 34.
MLA KILIÇARSLAN Serhat,Celik Mete ROTASYON ORMAN SINIFLANDIRMA ALGORİTMASI KULLANARAK KRONİK BÖBREK RAHATSIZLIĞININ TAHMİNİ. , 2019, ss.21 - 34.
AMA KILIÇARSLAN S,Celik M ROTASYON ORMAN SINIFLANDIRMA ALGORİTMASI KULLANARAK KRONİK BÖBREK RAHATSIZLIĞININ TAHMİNİ. . 2019; 21 - 34.
Vancouver KILIÇARSLAN S,Celik M ROTASYON ORMAN SINIFLANDIRMA ALGORİTMASI KULLANARAK KRONİK BÖBREK RAHATSIZLIĞININ TAHMİNİ. . 2019; 21 - 34.
IEEE KILIÇARSLAN S,Celik M "ROTASYON ORMAN SINIFLANDIRMA ALGORİTMASI KULLANARAK KRONİK BÖBREK RAHATSIZLIĞININ TAHMİNİ." , ss.21 - 34, 2019.
ISNAD KILIÇARSLAN, Serhat - Celik, Mete. "ROTASYON ORMAN SINIFLANDIRMA ALGORİTMASI KULLANARAK KRONİK BÖBREK RAHATSIZLIĞININ TAHMİNİ". (2019), 21-34.
APA KILIÇARSLAN S, Celik M (2019). ROTASYON ORMAN SINIFLANDIRMA ALGORİTMASI KULLANARAK KRONİK BÖBREK RAHATSIZLIĞININ TAHMİNİ. Journal of scientific reports-A (Online), 0(43), 21 - 34.
Chicago KILIÇARSLAN Serhat,Celik Mete ROTASYON ORMAN SINIFLANDIRMA ALGORİTMASI KULLANARAK KRONİK BÖBREK RAHATSIZLIĞININ TAHMİNİ. Journal of scientific reports-A (Online) 0, no.43 (2019): 21 - 34.
MLA KILIÇARSLAN Serhat,Celik Mete ROTASYON ORMAN SINIFLANDIRMA ALGORİTMASI KULLANARAK KRONİK BÖBREK RAHATSIZLIĞININ TAHMİNİ. Journal of scientific reports-A (Online), vol.0, no.43, 2019, ss.21 - 34.
AMA KILIÇARSLAN S,Celik M ROTASYON ORMAN SINIFLANDIRMA ALGORİTMASI KULLANARAK KRONİK BÖBREK RAHATSIZLIĞININ TAHMİNİ. Journal of scientific reports-A (Online). 2019; 0(43): 21 - 34.
Vancouver KILIÇARSLAN S,Celik M ROTASYON ORMAN SINIFLANDIRMA ALGORİTMASI KULLANARAK KRONİK BÖBREK RAHATSIZLIĞININ TAHMİNİ. Journal of scientific reports-A (Online). 2019; 0(43): 21 - 34.
IEEE KILIÇARSLAN S,Celik M "ROTASYON ORMAN SINIFLANDIRMA ALGORİTMASI KULLANARAK KRONİK BÖBREK RAHATSIZLIĞININ TAHMİNİ." Journal of scientific reports-A (Online), 0, ss.21 - 34, 2019.
ISNAD KILIÇARSLAN, Serhat - Celik, Mete. "ROTASYON ORMAN SINIFLANDIRMA ALGORİTMASI KULLANARAK KRONİK BÖBREK RAHATSIZLIĞININ TAHMİNİ". Journal of scientific reports-A (Online) 43 (2019), 21-34.