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[Y,YMSE]
= forecast(Mdl,numPeriods)
[Y,YMSE,V]
= forecast(Mdl,numPeriods)
[Y,YMSE,V] = forecast(Mdl,numPeriods,Name,Value)
[Y,YMSE] = forecast(Mdl,numPeriods) forecasts responses for a univariate ARIMA model, and generates corresponding mean square errors, YMSE.
[Y,YMSE,V] = forecast(Mdl,numPeriods) additionally forecasts conditional variances for an ARIMA model with a conditional variance model.
[Y,YMSE,V] = forecast(Mdl,numPeriods,Name,Value) generates the forecasts with additional options specified by one or more Name,Value pair arguments.
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