FAYLDAGI OBYEKTLARNI SEMANTIK TAHLIL QILISH ALGORITMLARINI ERGONOMIK METODIKASI
Kalit so‘zlar:
sun’iy intellekt, semantik qidiruv, TF-IDF, Word2Vec, talaba javoblarini tekshirish, PDF qidiruv, matn o‘xshashligi, kosinus o‘xshashligi.Annotatsiya
Ushbu maqolada PDF formatidagi elektron adabiyotlar va fayllar ichidan kerakli ma’lumotlarni tezkor topish va ma’lumotlarini semantik jihatdan tahlil qilish masalasi ko‘rib chiqiladi. Sun’iy intellekt asosida ishlab chiqilgan semantik qidiruv algoritmi taklif etiladi. Ushbu tadqiqotda matnlarni semantik tahlil qilish uchun zamonaviy axborot qidiruv va tabiiy tilni qayta ishlash usullari qo‘llanildi. Olingan natijalar shuni ko‘rsatdiki, chuqur o‘rganish modellari klassik usullarga nisbatan yuqori aniqlikni ta’minlaydi.
Iqtiboslar
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