RAQAMLI IQTISODIYOT SHAROITIDA ELEKTRON TIJORATNING RIVOJLANISH ISTIQBOLLARI VA TRANSFORMATSION OMILLARI
DOI:
https://doi.org/10.5281/zenodo.20240602Keywords:
elektron tijorat, Big Data, sun’iy intellekt, text mining, mijozlar qoniqishi, risklar tahlili, raqamli logistika.Abstract
Mazkur maqolada O‘zbekistonda elektron tijorat xizmatlari hajmini prognozlash uchun ko‘p omilli ekonometrik
model ishlab chiqilib, uning statistik ahamiyatliligi R², Adjusted R², Fisher F-mezoni, Styudent t-mezoni hamda
Darbin–Uotson ko‘rsatkichlari asosida baholangan. Olingan natijalar modelning yuqori darajadagi ishonchliligini tasdiqlaydi.
Shuningdek, elastiklik koeffitsiyentlari tahlili hamda pessimistik, inersion va optimistik ssenariylar asosida
2025-yilgacha elektron tijoratning rivojlanish istiqbollari prognoz qilingan
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