ELEKTRON TIJORAT BOZORIDA RISKLARNI BAHOLASH MASALALARI
DOI:
https://doi.org/10.5281/zenodo.20186395Keywords:
elektron tijorat, Big Data, sun’iy intellekt, text-mining, mijozlar qoniqishi, risklar tahlili, raqamli logistika.Abstract
Mazkur maqolada elektron tijoratni boshqarishda Big Data, sun’iy intellekt va raqamli logistika
texnologiyalarining o‘rni tahlil qilingan. Text-mining usuli asosida O‘zbekistondagi yirik elektron platformalarda mijozlar
qoniqishi hamda xizmat sifati o‘rtasidagi nomutanosiblik aniqlanib, operatsion, shartnomaviy va reputatsion risklar
baholangan. Tadqiqot natijalari elektron tijorat tizimida risklarni erta aniqlash, ularni samarali boshqarish hamda boshqaruv
qarorlarini optimallashtirish zarurligini ko‘rsatadi.
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