[R] glmmPQL and Convergence

rab45+@pitt.edu rab45+ at pitt.edu
Sat Aug 20 04:54:37 CEST 2005


I fit the following model using glmmPQL from MASS:

fit.glmmPQL <-
glmmPQL(ifelse(class=="Disease",1,0)~age+x1+x2,random=~1|subject,family=binomial)
summary(fit.glmmPQL)

The response is paired (pairing denoted by subject), although some
subjects only have one response. Also, there is a perfect positive
correlation between the paired responses. x1 and x2 can and do differ
within each pair. Here is the output:

> summary(fit.glmmPQL)
Linear mixed-effects model fit by maximum likelihood
 Data: fernando
       AIC      BIC    logLik
  30.51277 49.25655 -9.256384

Random effects:
 Formula: ~1 | subject
        (Intercept)     Residual
StdDev:    8.284993 4.113725e-09

Variance function:
 Structure: fixed weights
 Formula: ~invwt
Fixed effects: ifelse(class == "Disease", 1, 0) ~ age + x1 + x2
                  Value Std.Error  DF   t-value p-value
(Intercept)   -35.01862 2.4414559 123     -14.3       0
age             0.59026 0.0441817 123      13.4       0
x1              1.39317 0.0000014  41 1000507.2       0
x2              0.93695 0.0000010  41  915150.3       0
 Correlation:
              (Intr) age        x2
age           -0.952
x1             0.000  0.000
x2             0.000  0.000 -0.057

Standardized Within-Group Residuals:
          Min            Q1           Med            Q3           Max
-2.939213e+00 -2.509951e-07 -1.169248e-07  2.999710e-06  3.825035e+00

Number of Observations: 168
Number of Groups: 125


The t-values are huge and the se's are correspondingly tiny. The model
does a great job of discriminating between disease and no disease. But I
have a feeling there is something wrong here. Is there something wrong
with the type of model I'm trying to fit? If it weren't for the pairing I
would just have used glm. Any insights would be appreciated.

Rick B.




More information about the R-help mailing list