Studentized Autoregressive Time Series Residuals

SummaryIn this paper we develop large sample approximations for the variance of the residuals obtained from either a least squares or rank analysis of a first order autoregressive process. The formulas are elaborate, but can easily be computed either recursively or via an object oriented language such as S-PLUS. More importantly, our findings indicate that the variance of the residuals depend on much more than just the standard deviation of the error distribution. Thus, we caution against the use of the naive standardization for time series diagnostic procedures. Furthermore, the resutlts can be used to form studentized residuals analogous to those used in the linear regression setting.We compare these new residuals to the conditionally studentized residuals via an example and simulation study. The study reveals some minor differences betwen the two sets of residuals in regards to outlier detection. Based on our findings, we conclude that the classical studentized linear regression residuals, found in such packages as SAS, SPSS, and RGLM can effectively be used in an autoregressive time series context.