ISTE’MOL NARXLARI INDEKSINI MODELLASHTIRISH VA PROGNOZLASHNI TAKOMILLASHTIRISH YO‘NALISHLARI
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https://doi.org/10.5281/zenodo.19786941##article.subject##:
iste’mol narxlari indeksi, modellashtirish, prognozlash, regressiya, vaqt qatorlari, segmentar yondashuv, ssenariyli prognozlash, import narxlari, logistika xarajatlari, tariflar##article.abstract##
Maqolada iste’mol narxlari indeksini modellashtirish va prognozlashni takomillashtirishning ilmiy-uslubiy
yo‘nalishlari tahlil qilingan. Tadqiqotda vaqt qatorlari dekompozitsiyasi, segmentar regressiya, tashqi omillar integratsiyasi
va ssenariyli prognozlash yondashuvlari yagona metodik platformada birlashtirilgan. Taklif etilgan model oziq-ovqat, nooziqovqat
va xizmatlar segmentlari indekslari, import narxlari, logistika xarajatlari hamda tartibga solinadigan tariflar orqali INI
dinamikasini izohlash va variantli prognozlar tuzish imkonini beradi. Natijada umumiy indeksni faqat ekstrapolyatsiya
qilish emas, balki uning ichki tuzilmasi va tashqi uzatish kanallari bilan birgalikda baholash prognozlashning tahliliy va
boshqaruv qiymatini oshirishi asoslangan
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