% File src/library/stats/man/predict.arima.Rd % Part of the R package, https://www.R-project.org % Copyright 1995-2018 R Core Team % Distributed under GPL 2 or later \name{predict.Arima} \alias{predict.Arima} \title{Forecast from ARIMA fits} \description{ Forecast from models fitted by \code{\link{arima}}. } \usage{ \method{predict}{Arima}(object, n.ahead = 1, newxreg = NULL, se.fit = TRUE, \dots) } \arguments{ \item{object}{The result of an \code{arima} fit.} \item{n.ahead}{The number of steps ahead for which prediction is required.} \item{newxreg}{New values of \code{xreg} to be used for prediction. Must have at least \code{n.ahead} rows.} \item{se.fit}{Logical: should standard errors of prediction be returned?} \item{\dots}{arguments passed to or from other methods.} } \details{ Finite-history prediction is used, via \code{\link{KalmanForecast}}. This is only statistically efficient if the MA part of the fit is invertible, so \code{predict.Arima} will give a warning for non-invertible MA models. The standard errors of prediction exclude the uncertainty in the estimation of the ARMA model and the regression coefficients. According to Harvey (1993, pp.\sspace{}58--9) the effect is small. } \value{ A time series of predictions, or if \code{se.fit = TRUE}, a list with components \code{pred}, the predictions, and \code{se}, the estimated standard errors. Both components are time series. } \references{ Durbin, J. and Koopman, S. J. (2001). \emph{Time Series Analysis by State Space Methods}. Oxford University Press. Harvey, A. C. and McKenzie, C. R. (1982). Algorithm AS 182: An algorithm for finite sample prediction from ARIMA processes. \emph{Applied Statistics}, \bold{31}, 180--187. \doi{10.2307/2347987}. Harvey, A. C. (1993). \emph{Time Series Models}, 2nd Edition. Harvester Wheatsheaf. Sections 3.3 and 4.4. } \seealso{ \code{\link{arima}} } \examples{ od <- options(digits = 5) # avoid too much spurious accuracy predict(arima(lh, order = c(3,0,0)), n.ahead = 12) (fit <- arima(USAccDeaths, order = c(0,1,1), seasonal = list(order = c(0,1,1)))) predict(fit, n.ahead = 6) options(od) } \keyword{ts}