I want to use the new bootMer() feature of the new lme4 package (the developer version currently). I am new to R and don't know which function should I write for its FUN argument. It says it needs a numerical vector, but I have no idea what that function will perform. So I have a mixed-model formula which is cast to the bootMer(), and have a number of replicates. So I don't know what that external function does? Is it supposed to be a template for bootstrapping methods? Aren't bootstrapping methods already implemented in he bootMer? So why they need an external "statistic of interest"? And which statistic of interest should I use?

Is the following syntax proper to work on? R keeps on error generating that the FUN must be a numerical vector. I don't know how to separate the estimates from the "fit" and even should I do that in the first place? I can just say I am lost with that "FUN" argument. Also I don't know should I pass the mixed-model glmer() formula using the variable "Mixed5" or should I pass some pointers and references? I see in the examples that X (the first argument of bootMer() is a *lmer() object. I wanted to write *Mixed5 but it rendered an error.

Many thanks.

My code is:

```
library(lme4)
library(boot)
(mixed5 <- glmer(DV ~ (Demo1 +Demo2 +Demo3 +Demo4 +Trt)^2
+ (1 | PatientID) + (0 + Trt | PatientID)
, family=binomial(logit), MixedModelData4))
FUN <- function(formula) {
fit <- glmer(DV ~ (Demo1 +Demo2 +Demo3 +Demo4 +Trt)^2
+ (1 | PatientID) + (0 + Trt | PatientID)
, family=binomial(logit), MixedModelData4)
return(coef(fit))
}
result <- bootMer(mixed5, FUN, nsim = 3, seed = NULL, use.u = FALSE,
type = c("parametric"),
verbose = T, .progress = "none", PBargs = list())
result
FUN
fit
```

And the error:

```
Error in bootMer(mixed5, FUN, nsim = 3, seed = NULL, use.u = FALSE, type = c("parametric"), :
bootMer currently only handles functions that return numeric vectors
```

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

I edited the code like what Ben instructed. The code ran very good but the SEs and Biases were all zero. Also do you know how to extract P values from this output (strange to me)? Should I use mixed() of afex package?

My revised code:

```
library(lme4)
library(boot)
(mixed5 <- glmer(DV ~ (Demo1 +Demo2 +Demo3 +Demo4 +Trt)^2
+ (0 + Trt | PatientID)
, family=binomial(logit), MixedModelData4))
FUN <- function(fit) {
fit <- glmer(DV ~ (Demo1 +Demo2 +Demo3 +Demo4 +Trt)^2
+ (1 | PatientID) + (0 + Trt | PatientID)
, family=binomial(logit), MixedModelData4)
return(fixef(fit))
}
result <- bootMer(mixed5, FUN, nsim = 3)
result
```

-------------------------------------------------------- Update 2 -----------------------------------------------------

I also tried the following but the code generated warnings and didn't give any result.

```
(mixed5 <- glmer(DV ~ Demo1 +Demo2 +Demo3 +Demo4 +Trt
+ (1 | PatientID) + (0 + Trt | PatientID)
, family=binomial(logit), MixedModelData4))
FUN <- function(mixed5) {
return(fixef(mixed5))}
result <- bootMer(mixed5, FUN, nsim = 2)
```

Warning message:

```
In bootMer(mixed5, FUN, nsim = 2) : some bootstrap runs failed (2/2)
> result
Call:
bootMer(x = mixed5, FUN = FUN, nsim = 2)
Bootstrap Statistics :
WARNING: All values of t1* are NA
WARNING: All values of t2* are NA
WARNING: All values of t3* are NA
WARNING: All values of t4* are NA
WARNING: All values of t5* are NA
WARNING: All values of t6* are NA
```

-------------------------------------------------------- Update 3 -----------------------------------------------------

This code as well generated warnings:

```
FUN <- function(fit) {
return(fixef(fit))}
result <- bootMer(mixed5, FUN, nsim = 2)
```

The warnings and results:

```
Warning message:
In bootMer(mixed5, FUN, nsim = 2) : some bootstrap runs failed (2/2)
> result
Call:
bootMer(x = mixed5, FUN = FUN, nsim = 2)
Bootstrap Statistics :
WARNING: All values of t1* are NA
WARNING: All values of t2* are NA
WARNING: All values of t3* are NA
WARNING: All values of t4* are NA
WARNING: All values of t5* are NA
WARNING: All values of t6* are NA
```