Importance of ARIMA Model in Prediction of Jute Production
Jute palys an important role in the development of economy in Bangladesh and thus the forecasting of jute production by applying scientific process will definitely contribute to the upliftment of the socio economic condition of Bangladesh. The forecasting of jute production by using time series analysis and applying ARIMA model will help the concerned authority to adopt appropriate steps to produce the estimated jute production.
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