ELEKTRON TIJORATDA RAQAMLI TEXNOLOGIYALAR VOSITASIDA ISTE’MOLCHILAR FIKRINI MODELLASHTIRISH

Mualliflar

  • Abdulhafiz Sodikov Muallif

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iste’molchi fikri; elektron tijorat; tonallik tahlili; fikrlar tahlili; mashinali o’qitish; chuqur o’qitish; aspektga asoslangan tahlil.

Abstrak

Elektron tijoratda iste’molchilar fikrini jamlash va tahlil qilish strategik ustunlik hisoblanadi. Maqolada raqamli texnologiyalar yordamida iste’molchi munosabatini aniqlash modellari tadqiq etiladi. So’nggi adabiyotlar tahliliga tayanib, qoidalarga asoslangan leksikonlardan ilg’or chuqur neyron tarmoqlarigacha bo’lgan yondashuvlarning uslubiy asoslari, empirik natijalari va amaliy ahamiyati muhokama qilinadi. Tabiiy tilga ishlov berish (NLP), mashinali o’qitish va raqamli izlar tahlilini birlashtirgan gibrid tizimlar iste’molchilar fikrini amaliy tushunchalarga aylantirishda eng yuqori salohiyatga ega.

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Bibliografik havolalar

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Nashr qilingan

2026-06-24

Nashr

Bo'lim

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