Moran’s I or Cliff-Ord test statistic has been widely used for diagnostic testing of spatial correlation in a linear regression model with or without spatial autoregressive lags. The latter simple model can be easily estimated with OLS, while the former spatial lag model relies on maximum likelihood or the instrumental variables method. Specification testing for spatial autocorrelation is typically performed with the asymptotic distribution of Moran’s I test statistic, which depends on the normality assumption of the model. For many real world applications, the asymptotic theory of the Moran test may not be applicable because the classical normality assumption is rarely satisfied. In this paper, we apply residual-based wild bootstrap method...