KO‘CHMAS MULKNI OMMAVIY BAHOLASHNING INNOVATSION TEXNOLOGIYALARI
Keywords:
ommaviy baholash, ko‘chmas mulk, kadastr qiymati, mashinali o‘qitish (ML), LightGBM, XGBoost, CatBoost, regressiya tahlili, GIS.Abstract
Ommaviy baholash ko‘chmas mulkning kadastr qiymatini aniqlash va hududlar soliq bazasini shakllantirishda
muhim instrument hisoblanadi. Shu bilan birga, amalda qo‘llanilayotgan davlat kadastr baholash usullari asosan an’anaviy
statistik modellarga tayanadi va zamonaviy axborot texnologiyalari taqdim etayotgan imkoniyatlardan yetarli darajada
foydalanmaydi. Mazkur tadqiqotda GIS-texnologiyalar hamda sun’iy intellekt asosida urbanizatsiyalashgan hududlarda
ko‘chmas mulkni ommaviy baholashning zamonaviy yondashuvlari tahlil qilingan.
Tadqiqot jarayonida Toshkent shahri ko‘chmas mulk bozoridan veb-skreyping usuli orqali yig‘ilgan 7 000 ta obyekt
ma’lumotlari asosida mashinali o‘qitish (ML) algoritmlari — LightGBM (Light Gradient Boosting Machine), XGBoost
(eXtreme Gradient Boosting) va CatBoost modellari sinovdan o‘tkazilgan. Natijalar shuni ko‘rsatdiki, an’anaviy chiziqli
regressiya modellari bilan solishtirganda, ML modellari yuqori aniqlikni ta’minlaydi. Xususan, barcha ansambl modellar
uchun determinatsiya koeffitsiyenti (R²) 0,865 ni, o‘rtacha mutlaq foiz xatosi (MAPE) esa 13,5% ni tashkil etdi. Tadqiqot
natijasida mazkur texnologiyalarni davlat kadastr tizimiga integratsiya qilish bo‘yicha ilmiy-amaliy tavsiyalar ishlab chiqildi
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