An algorithm for the exact likelihood of a mixed autoregressive-moving average process

SUMMARY The likelihood function for an autoregressive-moving average process is obtained by transforming the process to obtain a band covariance matrix whose Cholesky decomposition can be readily computed. Refinements are given for pure autoregressive and multiplicative seasonal processes. Evidence is presented to show that this approach allows more efficient computation than other methods proposed in the literature.