QURUQ IQLIM SHAROITLARIDA QISHLOQ XOʻJALIGI ISHLAB CHIQARISHINI MASSHTABLASH USULLARI ASOSIDA BAHOLASH
Ключевые слова:
Holt-Winter, StandardScaler, MinMaxScaler, RobustScaler, Normalizer.Аннотация
Maqolada Holt-Winter usuli yordamida eksponensial tekislash va optimallashtirish asosida qishloq xo'jaligi mahsulotlarining ishlab chiqarishini baholash amalga oshirilgan. Ma'lumotlarni masshtablash ma'lumotlar to'plamidagi optimallashtirish algoritmlarini oldindan qayta ishlash bosqichlaridan biridir. Optimallashtirish usullarining samaradorligi o'rtacha foiz xatosi (MAPE) bilan o'lchanadi.
Библиографические ссылки
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