Qaror daraxtlari yordamida bank mijozlarining chiqib ketishini bashorat qilishning intellektual yondashuvlari
Kalit so'zlar:
qaror daraxtlari, mijozlarning chiqib ketishi, bank axborot tizimlari, mashinali o‘rganishAnnotatsiya
Ushbu maqolada qaror daraxtlari algoritmlariga asoslangan mijoz chiqib ketishini bashorat qilish (Customer Churn Prediction) modeli ishlab chiqish masalasi yoritiladi. Bank sektorida mijozlarning xizmatdan voz kechish ehtimolini aniqlash orqali strategik qarorlarni optimallashtirish, marketing xarajatlarini kamaytirish va mijozlarni ushlab qolish samaradorligini oshirish imkoniyati tahlil qilinadi. Maqolada qaror daraxtlarining matematik modeli, ularning klassifikatsiya mexanizmi, atributlar ahamiyatini baholash usullari hamda ma’lumotlar to‘plamini tayyorlash bosqichlari chuqur tahlil etilgan. Tadqiqot natijalari shuni ko‘rsatadiki, qaror daraxtlari asosidagi yondashuv mijozlarning chiqib ketish ehtimolini aniqlashda yuqori aniqlik va interpretatsiya darajasini ta’minlaydi
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