TABIIY TILNI QAYTA ISHLASH: AMALIYOTDA TEZKOR TAHLIL VA UNING YANGICHA YONDASHUVLARI

Authors

  • N.O. Raximov Muhammad al-Xorazmiy nomidagi Toshkent axborot texnologiyalari universiteti
  • D.E. Khojamberdiyev Muhammad al-Xorazmiy nomidagi Toshkent axborot texnologiyalari universiteti
  • Sh.A. Karaxanova Muhammad al-Xorazmiy nomidagi Toshkent axborot texnologiyalari universiteti

Keywords:

tabiiy tilni qayta ishlash, tokenizatsiya, stemming, lemmatizatsiya, his-tuyg‘ularni aniqlash, n-gram, TF-IDF, mashina o‘rganish, chatbotlar

Abstract

Ushbu maqola tabiiy tilni qayta ishlash texnologiyalari yordamida matnlarni tezkor va samarali tahlil qilishning amaliy jarayonlari hamda zamonaviy yondashuvlarini o‘rganishga bag‘ishlangan. Tabiiy tilni qayta ishlash bugungi kunda sun’iy intellekt va ma’lumotlar tahlilining muhim yo‘nalishlaridan biri bo‘lib, turli sohalarda, jumladan, avtomatik matn tasniflash, sentiment tahlili, muloqot tizimlari, va tarjima xizmatlarida faol qo‘llanilmoqda. Maqolada ushbu usullarning ishlash tamoyillari, algoritmik jarayonlari va har bir usulning kuchli va zaif tomonlari batafsil tahlil qilinadi

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Published

2024-10-28

How to Cite

Raximov, N., Khojamberdiyev, D., & Karaxanova, K. (2024). TABIIY TILNI QAYTA ISHLASH: AMALIYOTDA TEZKOR TAHLIL VA UNING YANGICHA YONDASHUVLARI. DIGITAL TRANSFORMATION AND ARTIFICIAL INTELLIGENCE, 2(5), 1–6. Retrieved from https://dtai.tsue.uz/index.php/dtai/article/view/v2i51