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I am trying to develop a mixed effects model on a data set with repeated measures.

Met is measured on a series of randomly selected days on 24 samples submitted to 3 treatments (Treat, with levels c, uc and ga)

The levels of Met change due to differences in weather conditions during the days (Date). Date thus becomes a second random effect of the model (along with the items sampled (ID)).

My main interest is to see whether Treat has a significant effect on Met across days.

some sample data:

# create example data frame 
ID     <-  factor(rep(c("a", "b", "c", "d", "e", "f", "g", "h", "i", "j", "k", "l", "m", "n", "o", "p", "q", "r", "s", "t", "u", "v", "w", "x"), 6))
Treat  <-  factor(rep(c(rep("c",8), rep("uc",8), rep("ga",8)), 6))
Date   <-  factor(rep(c(rep("10/06/2007",24), rep("19/06/2007",24), rep("12/07/2007",24), rep("21/07/2007",24), rep("11/08/2007",24), rep("12/08/2007",24)), 1))
Met    <-  as.numeric(c(rnorm(8,5,2),   rnorm(8,7,2),   rnorm(8,9,2), 
                        rnorm(8,15,2),  rnorm(8,17,2),  rnorm(8,19,2),
                        rnorm(8,9,2),   rnorm(8,11,2),  rnorm(8,13,2),
                        rnorm(8,8,2),   rnorm(8,10,2),  rnorm(8,12,2),
                        rnorm(8,2,2),   rnorm(8,4,2),   rnorm(8,6,2),
                        rnorm(8,3,2),   rnorm(8,5,2),   rnorm(8,7,2)))
ww     <-  gl(1,1,144)

lys.data  <-  data.frame(ID, Treat, Date, Met, ww)
head(lys.data)

# set contrasts of data frame
lys.data$Treat   <-  factor(lys.data$Treat,     levels=c("c", "uc", "ga"))

Then the analysis:

library(nlme)
lme.001  <-  lme(Met ~ Treat, data = lys.data,
                 random=list(ww=pdBlocked(list(pdIdent(~Date-1),
                             pdIdent(~ID-1)))))
summary(lme.001)

From the results I get it seems that I am not doing what I assume I am doing as the degrees of freedom seem incorrect (way too high). Is it correct that the number of denominator degrees of freedom increase with the number of repetitions (dates) that the experiment has been performed?

Who can help me out here or point me into the right direction? Am I going wrong with the way the I am representing the nesting of the data? (I assume there is none).

many thanks in advance.

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migrated from stats.stackexchange.com Jan 9 '13 at 17:50

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This question may be more at home on stackoverflow, since it is only a question about how to use lme. –  Macro Jan 9 '13 at 15:38
2  
I think it is special enough that nobody at SO will have a clue except possibly whuber if he is there :). –  StasK Jan 9 '13 at 16:49
1  
The website stats.stackexchange.com was a better place for this question. –  Sven Hohenstein Jan 10 '13 at 9:36
1  
thats where my question got moved from ... –  thijs van den bergh Jan 10 '13 at 10:04
    
Can you explain what led you to use that random structure instead of random=~Date|ID? Was there something in the residuals or the lmList plot that suggested this particular expression for the random effects? –  f1r3br4nd Jul 29 '13 at 13:48

1 Answer 1

The rules that lme uses to compute denominator degrees of freedom are described on p. 91 of Pinheiro and Bates (2000) -- this page happens to be available on Google Books. (That link is also available on the GLMM faq page.) I haven't checked out your example in great detail, but I strongly suspect that the issue is that you have a randomized block design rather than a strictly nested design, so that your degrees of freedom are higher than you think. In general the residual/denominator df are (number of blocks-1)*(number per block-1), rather than (as you may have been expecting) the (number of blocks-1) typical of a nested design: see here, for example.

On the other hand, it's possible that lme got it wrong, if the design is sufficiently complex -- in which case you may have to work it out for yourself, or a simple solution may not exist. Again, see the GLMM faq for advice.

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