MASHINALI O‘QITISHDA TAVSIYALAR TIZIMLARINING AMALIY QOʻLLANILISHI VA KELAJAK TENDENSIYALARI
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Kalit soʻzlar: Tavsiyalar tizimlari, elektron tijorat, taʼlimda personalizatsiya, personalizatsiya, cheklovlar, kelajak tendensiyalari, texnologik asoslar, graph-based modeling, explainable AI.##article.abstract##
Annotatsiya
Mazkur maqola mashinali o‘qitish tizimlari tavsiyalarni amaliy qoʻllanilishi va
kelajakdagi rivojlanish yoʻnalishlarini tahlil qiladi. Ushbu tizimlarning elektron tijorat,
platformalar va taʼlim sohasida qoʻllanilishi yoritiladi. Kelajakda sunʼiy intellekt va
mashinani oʻqitish orqali tavsiyalar tizimlari yanada yuqori darajada
personalizatsiyaga erishishi kutilmoqda.
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