RAQAMLI TEXNOLOGIYALARNING YANGI O‘ZBEKISTON RIVOJIGA TA’SIRI Xalqaro ilmiy-amaliy konferensiyasi that ARIMA assumes linearity, stationarity, and absence of outliers, and the model's performance
depends on the quality and characteristics of the data being analyzed.
Abbreviations AI –
Artificial Intelligence
ARIMA – Auto Regressive Integrated Moving Average
DS –
Data Science
GDP –
Gross Domestic Product
ML –
Machine Learning
OLS – Ordinary Least Squares
RFR - Random Forest Regression
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