Hello,
I have difficulties to deal with multilevel model. My dataset is composed
of 10910 observations, 1237 plants nested within 17 stations. The data set is not
balanced. Response variable is binary and repeated.
I tried to fit this model
model<- glmmPQL( y ~ z1.lon*lun + z2.lat*lun + z1.lon*lar + z2.lat*lar + z1.lon*sca +
z2.lat*sca +z1.lon*eta + z2.lat*eta,
random = ~ lun + lar + sca + eta | sta/piante, family=binomial, data=variabili)
where y is presence (1) or absence (0) of a flowering
lun, lar, sca, eta are level 1 variables
z1.lon, z2.lat are level 2 variables.
but during third iteration it stop because there is a singular matrix in solve.
I stopped it after two iterations, however the results are not correct.
How can I fit this data? Are there other functions that I can use?
I would be thankfull for all the insights.
Fabrizio Consentino
[[alternative HTML version deleted]]
______________________________________________
[EMAIL PROTECTED] mailing list
https://www.stat.math.ethz.ch/mailman/listinfo/r-help
PLEASE do read the posting guide! http://www.R-project.org/posting-guide.html