# R: bootstrapped mixed model binary logistic regression

I need to bootstrap my mixed model binary logistic regression. The model itself works fine (and is approved and corrected by an expert friend), but the bootstrapped version is buggy. The bootstrapped version was previously approved by another expert friend (in CrossValidated but later mods removed my post saying it does not belong on CrossValidated). But the same code happened to work for a simple fixed-effects multiple logistic regression (although in that case too there were lots of warnings similar to the warnings here [except this single warning which is for the lmer() function: "In mer_finalize(ans) : false convergence (8)").

Could you please let me know where the error resides and how to debug it?

Many thanks.

My code is (I temporarily kept the replicate numbers too low to debug the code):

``````library(boot)
library(lme4)

mixedGLM <- function(formula, data, indices) {
d <- data[indices, ]
(fit <- lmer(DV ~ (Demo1 +Demo2+Demo3 +Demo4 +Trt)^2
+ (1 | PatientID) + (0 + Trt | PatientID)
, family=binomial(logit), d))
return(coef(fit))
}

results <- boot(data=MixedModelData4 , statistic = mixedGLM, R= 2, formula= DV~Demo1 +Demo2 +Demo3 +Demo4 +Trt)
``````

. . . My errors are:

``````Error in t.star[r, ] <- res[[r]] :
incorrect number of subscripts on matrix
1: In mer_finalize(ans) : false convergence (8)
2: glm.fit: algorithm did not converge
3: glm.fit: fitted probabilities numerically 0 or 1 occurred
4: glm.fit: fitted probabilities numerically 0 or 1 occurred
5: In mer_finalize(ans) : false convergence (8)
``````

. . . Also could you please tell me how to make the boot() function give P values too??! It just gives beta and SE and bias and CI, but I need the P values too.

Many thanks.

--------------------------------------------------- Developing Story -----------------------------------------------------

Ok I gladly ran the nice code of Henrik. But the code did not quite finish running. First it gave this error:

``````Fitting 17 lmer() models:
[...
Error: pwrssUpdate did not converge in 30 iterations
In mixed(DV ~ (Demo1 + Demo2 + Demo3 + Demo4 + Trt)^2 + (1 | PatientID) +  :
Due to missing values, reduced number of observations to 90
> (results2 <- mixed(DV ~ (Demo1 +Demo2+Demo3 +Demo4 +Trt)^2
+ results3 <- mixed(DV ~ (Demo1 +Demo2+Demo3 +Demo4 +Trt)^2
``````

Then I removed the first parentheses block and revised the syntax to this one:

``````results3 <- mixed(DV ~ (Demo1 +Demo2+Demo3 +Demo4 +Trt)^2
+ (0 + Trt | PatientID),
family=binomial(logit), data = MixedModelData4,
method = "PB", args.test = list(nsim = 2))
``````

This time the test passed the first step (fitting the models) but failed at obtaining P values, again giving the same errors and warnings:

``````Fitting 17 lmer() models:
[.................]
Obtaining 16 p-values:
[....
Error: pwrssUpdate did not converge in 30 iterations
1: In mixed(DV ~ (Demo1 + Demo2 + Demo3 + Demo4 + Trt)^2 + (0 + Trt |  :
Due to missing values, reduced number of observations to 90
2: In (function (fn, par, lower = rep.int(-Inf, n), upper = rep.int(Inf,  :
failure to converge in 10000 evaluations
3: In (function (fn, par, lower = rep.int(-Inf, n), upper = rep.int(Inf,  :
failure to converge in 10000 evaluations
4: In (function (fn, par, lower = rep.int(-Inf, n), upper = rep.int(Inf,  :
failure to converge in 10000 evaluations
5: In (function (fn, par, lower = rep.int(-Inf, n), upper = rep.int(Inf,  :
failure to converge in 10000 evaluations
6: In (function (fn, par, lower = rep.int(-Inf, n), upper = rep.int(Inf,  :
failure to converge in 10000 evaluations
``````

I have no idea how to debug it, or if the problem is my dataset? I should add that my dataset is fully mean-centered (all variables). The DV is only negated (since mean centering disallowed R to work and negating would do the same for a binary outcome).

---------------------------------------------------------- Update -------------------------------------------------------------

I changed the PB value of METHOD to LRT (as Henrik recommended) and the process of fitting the models finished but the process of obtaining the P values didn't start:

``````> results4 <- mixed(DV ~ (Demo1 +Demo2+Demo3 +Demo4 +Trt)^2
+                   + (0 + Trt | PatientID),
+                   family=binomial(logit), data = MixedModelData4,
+                   method = "LRT", args.test = list(nsim = 2))
Fitting 17 lmer() models:
[.................]
Warning message:
In mixed(DV ~ (Demo1 + Demo2 + Demo3 + Demo4 + Trt)^2 + (0 + Trt |  :
Due to missing values, reduced number of observations to 90
``````

It turned out the P values are not obtained by bootstrapping when LRT is being used. Therefore, the results were already ready (although non-bootstrapped).

-
A couple of quick comments: ?boot - defining the statistic 'The first argument passed will always be the original data. The second will be a vector of indices'. Also formula (in mixedGLM argument) is not defined in mixedGLM. If you are sampling from the data in long format you will destroy the correlation in the repeat measures. – user20650 Aug 25 '13 at 11:55
Thanks a lot. Are you talking about this statement: "results <- boot()"? Then I should add a vector of indices... I couldn't clearly understand why mixedGLM argument was not already defined? Could you please detail? My final question is that from which part of the formula or the bootstrap code you inferred that I am destroying the correlations? If you want more details on my design, please see here: talkstats.com/showthread.php/… – Vic Aug 25 '13 at 12:07
Please note that I don't have a real repeated-measures, but a pseudo-replication. My patients are repeated in the long-format dataset. So I don't know if I even have a real correlation between repeated measures or a 100% pseudo-correlation? My Demo variables are at patient level, but the Trt (treatment) is at treatment level, repeated for each patient with the real medication and the placebo... for details, check that link please. – Vic Aug 25 '13 at 12:10
where you have defined mixedGLM function, your first argument is 'formula' but you have not defined 'formula' in the body of the mixedGLM function. When defining the function the first argument should be the actual data & second the indices. If you sample from the long format you may only get one measurement in time per subject (just the first intervention say). Better to transform to wide and sample at the subject level. – user20650 Aug 25 '13 at 12:48
A few comments: (1) it would be a really good idea to check out the development (soon-to-be-released) version of `lme4`, which has some built-in capabilities [`bootMer` and `confint(...,method="boot")`] and (2) the `refit()` function that speeds things up a lot; (3) it is very common to see failures on some bootstrap replicates. – Ben Bolker Aug 25 '13 at 16:13

If you want p-values from a `GLMM` with a parametric bootstrap you can use function `mixed` from package `afex` which obtains them via `pbkrtest::PBmodcomp`:

``````library(afex)
results <- mixed(DV ~ (Demo1 +Demo2+Demo3 +Demo4 +Trt)^2
+ (1 | PatientID) + (0 + Trt | PatientID),
family=binomial(logit), data = d,
method = "PB", args.test = list(nsim = 1000))
``````

You could even first define a local cluster (i.e., use multiple cores):

``````cl <- makeCluster(rep("localhost", 4))
results <- mixed(DV ~ (Demo1 +Demo2+Demo3 +Demo4 +Trt)^2
+ (1 | PatientID) + (0 + Trt | PatientID),
family=binomial(logit), data = d,
method = "PB", args.test = list(nsim = 1000, cl = cl))
``````

It is probably the best to install the development versions of all three packages (as the current version of `pbkrtest` is designed for `lme4` 1.0 which is not yet on cran):

-
I just can say Awesome! :) I am installing R3 and trying the packages you kindly linked to. – Vic Aug 25 '13 at 12:49
This problem is know and the author of `pbkrtest` is working on it: thread.gmane.org/gmane.comp.lang.r.lme4.devel/10509/focus=10518 But it means, your model/data is not really well behaved. Does it fail on a particular model? ALternatively try `method="LRT"` instead of `"PB"` and use PBmodcomp on only the interesting comparisons. – Henrik Aug 25 '13 at 15:00
btw, `method = "LRT"` does not compute p-values based on parametric bootstrap but based on likelihood ratio tests. – Henrik Aug 25 '13 at 16:04
@vic If you use `method = "LRT"` you are not bootstrapping. Only `method = "PB"` uses bootstrap. If you use thise with a sufficiently large sample (> 1000) this is your bootstrap. – Henrik Aug 25 '13 at 18:25
@Vic as I said, the author of `pbkrtest` knows about this problem and is working on it (but I don't know when thre will be a solution). So long, you can use the old version of `lme4` (< 1) and pbkrtest (0.3.4 from the CRAN Archives: cran.r-project.org/src/contrib/Archive/pbkrtest). This should work better. – Henrik Aug 26 '13 at 14:41