Geofazoviy maʼlumotlar asosida hududlarning farovonlik darajasini aniqlash
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https://doi.org/10.5281/zenodo.16787890##semicolon##
geofazoviy maʼlumotlar, tungi yoritilganlik (NTL), sunʼiy intellekt, farovonlikni baholash, kambagʻallikni xaritalash.##article.abstract##
Ushbu maqola Oʻzbekistonda hududlarning ijtimoiy-iqtisodiy farovonlik darajasini baholash uchun anʼanaviy
soʻrovnomalarga muqobil va toʻldiruvchi zamonaviy yondashuvni tahlil qiladi. Tadqiqotda sunʼiy yoʻldoshdan olingan
tungi yoritilganlik (NTL) kabi geofazoviy maʼlumotlarni sunʼiy intellekt va mashinali oʻrganish algoritmlari yordamida
qayta ishlash metodologiyasi koʻrib chiqilgan. Maqolada ushbu texnologiyaning afzalliklari, jumladan, yuqori aniqlikdagi
farovonlik xaritalarini yaratish, siyosat samaradorligini oshirish va resurslarni maqsadli taqsimlash imkoniyatlari yoritilgan.
Shuningdek, algoritmik noxolislik va maʼlumotlar maxfiyligi kabi xatarlar tahlil qilinib, Oʻzbekistonda ushbu texnologiyani
masʼuliyatli joriy etish boʻyicha strategik takliflar ilgari surilgan
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