library(nlme) # data(bdf) ## Fit the null model ## Compare with Table 4.1, p. 47 fm1 <- lme(langPOST ~ 1, data = bdf, random = ~ 1 | schoolNR) VarCorr(fm1) -2*c(logLik(fm1)) # deviance ## Fit model with fixed IQ term and random intercept ## Compare with Table 4.2, p. 49 ## From the results in Tables 4.2 and 4.4, it appears that ## maximum likelihood fits are used, not REML fits. fm2 <- update(fm1, langPOST ~ IQ.ver.cen) summary(fm2) VarCorr(fm2) -2 * c(logLik(fm2)) # deviance ## Purely fixed-effects model for comparison ## Compare with Table 4.3, p. 51 fm3 <- lm(langPOST ~ IQ.ver.cen, data = bdf) summary(fm3) -2 * c(logLik(fm3)) # deviance ## Model with average IQ for the school ## Compare with Table 4.4, p. 55 fm4 <- update(fm2, langPOST ~ IQ.ver.cen + avg.IQ.ver.cen) summary(fm4) VarCorr(fm4) -2 * c(logLik(fm4)) # deviance