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I have a (70 rows x 4 columns) dataframe (data) that has 10% of NAs. My dataframe has no more than one NA per row. From this dataset, I would like to produce 10 dataframes with 60% of NAs. But I do not want to have entirely empty (=all-NA) rows. So I made a while loop nested into a for loop. The code is working but it is taking a very long time to run. As I need to run this loop for many datasets I would like to know if there is an easy way to improve it.

My dataframe looks like that:

library(missForest)
data<-iris[1:70,1:4]
for(i in 1:28){
  data[i,]<-prodNA(data[i,],noNA =0.25)
}

And here is my loop:

    missing.data<-list()

  for(j in 1:10){
    missing.data[[j]]<-prodNA(data, noNA = 0.6)
      while(sum(rowSums(is.na(missing.data[[j]]))==4)!=0) {
        missing.data[[j]]<-prodNA(data, noNA = 0.6)
    }
}

EDIT: The loop becomes very slow for noNA > 0.55 but unfortunately I need to introduce 60% of NA's.. Also, the NA's introduced in the loop are introduced completely at random, so they can "replace" the NA's that are in the original dataframe (data).

share|improve this question
    
Can you please tell how do you want to assign the NA's?Is it okay to have one data to have more NA's than others? –  Metrics Aug 15 '13 at 19:15
2  
The NA`s should be assigned at random, so one data can have more NA's than others, the unique condition is to avoid all-NA rows. –  CP1 Aug 15 '13 at 19:19

1 Answer 1

I am not sure if this is what you are looking for:

library(missForest)
data1<-iris[1:70,1:4]
for(i in 1:28){
     data1[i,]<-prodNA(mydata[i,],noNA =0.10)
 }
table(is.na(data1))
n<-10
data2<-do.call("rbind", replicate(n, data1, simplify=FALSE))
table(is.na(data2))

data3<-prodNA(data2,noNA=0.55)
> table(is.na(data3))

FALSE  TRUE 
 1133  1667 
share|improve this answer
    
Thanks for your answer! It is a good solution to avoid the "for" loop but in the final dataset there are all-NA rows (= rows without any value). The 'while' loop was supposed to avoid this problem. Actually the "while" loop is the part of the script that takes a long time.. –  CP1 Aug 15 '13 at 20:18
    
Yes,I didn't realize that ProdNA has no option for excluding all NAs in the same row. –  Metrics Aug 15 '13 at 20:28

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