# Parallel computation of multiple imputations by using mice

I want to run 150 multiple imputations by using `mice` in `R`. However, in order to save some computing time, I would like to subdivide the process in parallel streams (as suggested by Stef van Buuren in "Flexible Imputation for Missing Data").

My question is: how to do that?

I can imagine 2 options:

opt.1:

``````imp1<-mice(data, m=1, pred=quicktry, maxit=15, seed=1)
imp2<-mice(data, m=1, pred=quicktry, maxit=15, seed=1)
imp...<-mice(data, m=1, pred=quicktry, maxit=15, seed=1)
imp150<-mice(data, m=1, pred=quicktry, maxit=15, seed=1)
``````

and then combine the imputations together by using `complete` and `as.mids` afterwards

opt.2:

``````imp1<-mice(data, m=1, pred=quicktry, maxit=15, seed=VAL_1to150)
imp2<-mice(data, m=1, pred=quicktry, maxit=15, seed=VAL_1to150)
imp...<-mice(data, m=1, pred=quicktry, maxit=15, seed=VAL_1to150)
imp150<-mice(data, m=1, pred=quicktry, maxit=15, seed=VAL_1to150)
``````

by adding `VAL_1to150` otherwise it seems to me (I may be wrong) that if they all run with the same dataset and the same seed you will have 150 times the same result.

Are there any other options?

Thanks

• I think the reason you haven't had any answers is that your question is too broad, and not specific enough. There are many resources on the topic of parallel processing using R. Try to build some code that implements your options, then post a more specific question if you run into trouble. Jun 5, 2014 at 13:24
• Dividing per se doesn't save computing time. You would need to look into parallelization packages such as `parallel`, `snow` or `multicore`. However, learning how these work will probalby cost more time than what you save with your imputation. Aug 30, 2014 at 12:21
• Are you still interested in the answer? Oct 2, 2014 at 18:30
• @SimonG: It's not that difficult in terms of implementation, I'd say the most challenging part is to know what to parallelize and how in terms of application data. I recently implemented exactly what Emanuela was trying to do and I'm extremely satisfied by the result. You can read more in my answer here: stackoverflow.com/a/26154261/2872891. Oct 2, 2014 at 18:37
• Yes, Aleksandr, I'm still interested! I will definitively try the procedure you suggest. Oct 3, 2014 at 6:35

So the main problem is combining the imputations and as I see it there are three options, using `ibind`, `complete` as described or trying to keep the mids structure. I strongly suggest the `ibind` solution. The others are left in the answer for those curious.

# Get parallel results

Before doing anything we need to get the parallel mice imputations. The parallel part is rather simple, all we need to do is to use the parallel package and make sure that we set the seed using the `clusterSetRNGStream`:

``````library(parallel)
# Using all cores can slow down the computer
# significantly, I therefore try to leave one
# core alone in order to be able to do something
# else during the time the code runs
cores_2_use <- detectCores() - 1

cl <- makeCluster(cores_2_use)
clusterSetRNGStream(cl, 9956)
clusterExport(cl, "nhanes")
clusterEvalQ(cl, library(mice))
imp_pars <-
parLapply(cl = cl, X = 1:cores_2_use, fun = function(no){
mice(nhanes, m = 30, printFlag = FALSE)
})
stopCluster(cl)
``````

The above will yield `cores_2_use * 30` imputed datasets.

# Using `ibind`

As @AleksanderBlekh suggested, the `mice::ibind` is probably the best, most straightforward solution:

``````imp_merged <- imp_pars[]
for (n in 2:length(imp_pars)){
imp_merged <-
ibind(imp_merged,
imp_pars[[n]])
}
``````

# Using `foreach` with `ibind`

The perhaps the simplest alternative is to use `foreach`:

``````library(foreach)
library(doParallel)
cl <- makeCluster(cores_2_use)
clusterSetRNGStream(cl, 9956)
registerDoParallel(cl)

library(mice)
imp_merged <-
foreach(no = 1:cores_2_use,
.combine = ibind,
.export = "nhanes",
.packages = "mice") %dopar%
{
mice(nhanes, m = 30, printFlag = FALSE)
}
stopCluster(cl)
``````

# Using `complete`

Extracting the full datasets using `complete(..., action="long")`, `rbind`-ing these and then using `as.mids` other `mice` objects may work well but it generates a slimmer object than what the other two approaches:

``````merged_df <- nhanes
merged_df <-
cbind(data.frame(.imp = 0,
.id = 1:nrow(nhanes)),
merged_df)
for (n in 1:length(imp_pars)){
tmp <- complete(imp_pars[[n]], action = "long")
tmp\$.imp <- as.numeric(tmp\$.imp) + max(merged_df\$.imp)
merged_df <-
rbind(merged_df,
tmp)
}

imp_merged <-
as.mids(merged_df)

# Compare the most important the est and se for easier comparison
cbind(summary(pool(with(data=imp_merged,
exp=lm(bmi~age+hyp+chl))))[,c("est", "se")],
summary(pool(with(data=mice(nhanes,
m = 60,
printFlag = FALSE),
exp=lm(bmi~age+hyp+chl))))[,c("est", "se")])
``````

Gives the output:

``````                    est         se         est         se
(Intercept) 20.41921496 3.85943925 20.33952967 3.79002725
age         -3.56928102 1.35801557 -3.65568620 1.27603817
hyp          1.63952970 2.05618895  1.60216683 2.17650536
chl          0.05396451 0.02278867  0.05525561 0.02087995
``````

# Keeping a correct mids-object

My alternative approach below shows how to merge imputation objects and retain the full functionality behind the `mids` object. Since the `ibind` solution I've left this in for anyone interested in exploring how to merge complex lists.

I've looked into `mice`'s mids-object and there are a few step that you have to take in order to get at least a similar mids-object after running in parallel. If we examine the mids-object and compare two objects with two different setups we get:

``````library(mice)
imp <- list()
imp <- c(imp,
list(mice(nhanes, m = 40)))
imp <- c(imp,
list(mice(nhanes, m = 20)))

sapply(names(imp[]),
function(n)
try(all(useful::compare.list(imp[][[n]],
imp[][[n]]))))
``````

Where you can see that the call, m, imp, chainMean, and chainVar differ between the two runs. Out of these the imp is without doubt the most important but it seems like a wise option to update the other components as well. We will therefore start by building a mice merger function:

``````mergeMice <- function (imp) {
merged_imp <- NULL
for (n in 1:length(imp)){
if (is.null(merged_imp)){
merged_imp <- imp[[n]]
}else{
counter <- merged_imp\$m
# Update counter
merged_imp\$m <-
merged_imp\$m + imp[[n]]\$m
# Rename chains
dimnames(imp[[n]]\$chainMean)[] <-
sprintf("Chain %d", (counter + 1):merged_imp\$m)
dimnames(imp[[n]]\$chainVar)[] <-
sprintf("Chain %d", (counter + 1):merged_imp\$m)
# Merge chains
merged_imp\$chainMean <-
abind::abind(merged_imp\$chainMean,
imp[[n]]\$chainMean)
merged_imp\$chainVar <-
abind::abind(merged_imp\$chainVar,
imp[[n]]\$chainVar)
for (nn in names(merged_imp\$imp)){
# Non-imputed variables are not in the
# data.frame format but are null
if (!is.null(imp[[n]]\$imp[[nn]])){
colnames(imp[[n]]\$imp[[nn]]) <-
(counter + 1):merged_imp\$m
merged_imp\$imp[[nn]] <-
cbind(merged_imp\$imp[[nn]],
imp[[n]]\$imp[[nn]])
}
}
}
}
# TODO: The function should update the \$call parameter
return(merged_imp)
}
``````

We can now simply merge the two above generated imputations through:

``````merged_imp <- mergeMice(imp)
merged_imp_pars <- mergeMice(imp_pars)
``````

Now it seems that we get the right output:

``````# Compare the three alternatives
cbind(
summary(pool(with(data=merged_imp,
exp=lm(bmi~age+hyp+chl))))[,c("est", "se")],
summary(pool(with(data=merged_imp_pars,
exp=lm(bmi~age+hyp+chl))))[,c("est", "se")],
summary(pool(with(data=mice(nhanes,
m = merged_imp\$m,
printFlag = FALSE),
exp=lm(bmi~age+hyp+chl))))[,c("est", "se")])
``````

Gives:

``````                    est         se         est        se
(Intercept) 20.16057550 3.74819873 20.31814393 3.7346252
age         -3.67906629 1.19873118 -3.64395716 1.1476377
hyp          1.72637216 2.01171565  1.71063127 1.9936347
chl          0.05590999 0.02350609  0.05476829 0.0213819
est         se
(Intercept) 20.14271905 3.60702992
age         -3.78345532 1.21550474
hyp          1.77361005 2.11415290
chl          0.05648672 0.02046868
``````

Ok, that's it. Have fun.

• Just FYI: I think that you could have simplified things a lot by using `mice`'s `ibind()` instead of your `mergeMice()`: inside-r.org/packages/cran/mice/docs/ibind. Nov 29, 2014 at 2:40
• Thanks @AleksandrBlekh - I've added this as the recommended solution. Annoying that I didn't find it at a first glance. Nov 29, 2014 at 9:23
• My pleasure! I too, haven't noticed it right away - somebody pointed me to this approach. BTW, when adding the reference, you've made a typo in the function name throughout the answer (with the exception of the code block) - it's `ibind`. Nov 29, 2014 at 9:33
• This is a great answer -- I both upvoted it and saved it to Evernote -- but I am having trouble with the first solution. I have a 45000x64 data set with about 5% missingness. Running the code from the first part of the solution took about 20 minutes on a 4 core 2.5GHz laptop with m = 1, as a test. Running the same code on a server with 24 cores of equal speed took twice as long. Where am I going wrong? I tried it with m = 30 but after 2 hours I had to kill it because I didn't have enough time to see how long it would take to finish. Mar 16, 2015 at 20:17
• @Hack-R: In my experience this is due to lack of memory. If you run into the max memory a Windows machine will start swapping (a virtual halt) while a Linux machine crashes. I recently wrote a blog post about parallelization: gforge.se/2015/02/how-to-go-parallel-in-r-basics-tips I would recommend that you try and reduce the number of columns in your dataset (if possible), alternatively save the imputed datasets on file, return the file name, do a `rm(imp_data); gc();` and then load the files after the imputation. Mar 16, 2015 at 20:26