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I am beginning R user and I have a question about a problem I encountered:

  • Very large dataset (almost 800k rows)
  • This dataset lists all contributions to a politicians in the 90s in the US

After some data cleaning, I needed to reduce the list to a more manageable size. Since I am interested in contributors who have donated more than once, I have decided to try to limit the size of the dataset like that.

The dataset is loaded as "cont"

My intention:

  1. Map frequencies of mentions:

    > table(cont$contributor_name) -> FreqCon
    > subset(FreqCon,Freq>4) -> FMI
  2. Insert an extra column as cont[,43] with name "include" that would say TRUE or FALSE for whether I should subset it

    for(i in 1:dim(FMI)[1]){
    + ifelse(cont[i,11] %in% FMI[,1],cont[i,43] <- TRUE, cont[i,43] <- FALSE) }
  3. Subset the dataset based on cont$include

I hope that is all relevant information. I am happy to provide more info if needed! Also:cont[,11] = cont$contributor_name

THE PROBLEM: Currently, R is working very hard, but does not seem to change anything in the column. I am confused as to what I am doing wrong, since I am not getting any warnings() or Errors.

Maybe I am trying to reinvent the wheel so any way of accomplishing what I set out to do would be much appreciated!

share|improve this question

You don't need a loop. This is the kind of problem that vectorisation is designed to solve.

FreqCon <- table(cont$contributor_name)
FMI <- names(FreqCon)[FreqCon > 4]
small_cont <- subset(cont, contributor_name %in% FMI)
share|improve this answer

It sounds like you're just trying to subset by frequency. If that is the case, something like the following should work:

mydf[mydf$V1 %in% names(which(table(mydf$V1) > 1)), ]
#    V1          V2
# 4   s -0.30538839
# 5   e  1.51178117
# 7   s -0.62124058
# 11  e -0.01619026

The logic is to just run table across the "V1" column ("contributor_name" for your dataset), and then just identify which ones meet your condition (here I've set it to any "V1" that occurs more than once).

There is no need to create another column as an intermediate step.

If this is indeed what you're after, and you have large data, you may want to consider using the data.table package:

> library(data.table)
> DT <- data.table(mydf)
> DT[, N := .N, by = "V1"][N > 1]
   V1          V2 N
1:  s -0.30538839 2
2:  e  1.51178117 2
3:  s -0.62124058 2
4:  e -0.01619026 2

In the above, .N is like table for data.table and does create a new column (in this case, named "N"). The syntax is a bit different from base R, but it should be much more effective for large data.

For these examples, mydf was defined as follows:

mydf <- data.frame(V1 = sample(letters[1:20], 12, replace = TRUE), 
                   V2 = rnorm(12))
#    V1          V2
# 1   f  0.48742905
# 2   h  0.73832471
# 3   l  0.57578135
# 4   s -0.30538839
# 5   e  1.51178117
# 6   r  0.38984324
# 7   s -0.62124058
# 8   n -2.21469989
# 9   m  1.12493092
# 10  b -0.04493361
# 11  e -0.01619026
# 12  d  0.94383621
share|improve this answer

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