I am using mice to impute my data. It has a neat feature which creates a prediction matrix for your dataframe based on the correlation between variables.

LINK

Because I have multiple datasets that need imputing and it takes quite a long time, I want to create the prediction matrix for each df in ls() with a for loop. The vignette example is as follows:

require(mice)
require(lattice)
set.seed(123)

ini <- mice(nhanes, pred=quickpred(nhanes, mincor=.3), print=F)
ini$pred
##     age bmi hyp chl
## age   0   0   0   0
## bmi   1   0   0   1
## hyp   1   0   0   1
## chl   1   1   1   0

I would like to do something like:

for (i in ls())  {
  pred[[i]]=quickpred(ls(i), mincor=.3)
}

However, I cannot get the syntax right. The idea would be that it creates an instance of pred for every item in ls(). I have looked at the links below, but I cannot seem to get it right:

1. R Create objects in loop named..

2. for loop to output different objects..

EDIT: With some help I have been able to advance my answer to the following;

pred = list()
for (i in 1:length(ls()))  {
pred[[i]]=quickpred(get(ls()[i]), mincor=.3)
}

I have not had time to thoroughly test, but got no error yet.

  • can you share please your error message @Tom? I have several assumptions: 1. list pred is not initialised 2. you can write instead of ls(i) just i 3. the object you address by i is not a data.frame – floe Nov 9 at 12:47
  • So my last edit actually worked. It creates a list of matrices. – Tom 2 days ago

Your Answer

 

By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

Browse other questions tagged or ask your own question.