MASHINE LEARNING FOYDALANISHDA QANDLI DIABET TASHXOSI MUAMMOLARINI YECHISH
Kalit so‘zlar:
машинали ўқитиш, чизиқли регрессия, содда Байес классификатори модели, таянч векторлар усули, ўртача квадратик хато, детерминация коеффициенти.Abstrak
Ушбу мақолада биз диабетни ташхислаш билан боғлиқ масалаларда машинали ўқитишни турли хил қўлланилишини кўриб чиқамиз, шунингдек, замонавий тиббий амалиётни яхшилаш ва диабет билан касалланган беморларнинг ҳаёт сифатини яхшилашда машинали ўқитишнинг ролини таъкидлаймиз.
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