АЙЫЛ ЧАРБА ӨСҮМДҮҮЛӨРҮНҮН ООРУЛАРЫН БОЛГОН ПРОБЛЕМАЛАРЫНЫН НЕЙРАЛДЫК ТАРМАГЫН КУРУУ
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Нейрондук тармак, модель, жүгөрү оорулары, таануу, үйрөнүү, болжолдоо.Аннотация
Бул макалада Tensorflow'та нейрондук тармакты окутууну кантип башкаруу керек деген суроо каралат. Түзүлгөн моделдин тактыгын талдоо үчүн жүгөрү жалбырактарынын оорулуу жана соолуктарынын маалымат базасы колдонулган. Модель ар кандай окутуу доорлору үчүн талданган. Өсүмдүк ооруларынын ROC ийри сызыктары түзүлүп, ката матрицасы алынды.
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