CHUQUR NEYRON TARMOQNI O`QITISH ORQALI MASTAT TIZIMINI ALGORITMI
Abstract
Hozirgi kunda inson hayotining barcha sohalarida, ayniqsa internetda juda ko'p ma'lumotlar mavjud. Muhim ma'lumotni mavjud ma'lumotlar bazasidan xulosa yaratish orqali ko'rib chiqish va ajratish mumkin. Matn mazmuni ko‘payishda davom etar ekan, matnni umumlashtirish uchun aqlliroq va takomillashtirilgan yechimlarni joriy etish orqali ushbu o'sishni boshqarish tadqiqot hamjamiyatiga yuk bo'lib qoldi. Ma'lumotlar o'sishining tezligi va hajmining ortishi bilan, katta hajmdagi matn hujjatlaridan zarur ma'lumotlarni olish ancha murakkablashadi.
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