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I have three data sources:


the numbers in the "types" vector tell me what 'type' a given observation is. The vectors in the places list tell me which places the observation can be found in (some observations are found in only one place, others in all places). By definition there is one entry in types and one list in places for each observation. Lookup.counts tells me how many observations of each type are located in each place (generated from another data source).

I want to randomly assign each observation to a place based on a probability generated from lookup.counts. Using for loops it looks something like"

for (i in 1:length(types)){
  this.obs<-lookup.counts[row,columns] #the counts of this type in each place
  this.obs<-this.obs/total #the share of observations of this type in these places

  #the following should really be a 'while' loop, but regardless it needs help
  for(j in 1:length(this.obs[])){
    if(this.obs[j] > pick){
      #pick is less than this county so assign
      pick<- 100 #just a way of making sure an observation doesn't get assigned twice
      #pick is greater, move to the next category
      pick<- pick-this.obs[j]

I have been trying to vectorize this somehow, but am getting hung up on the variable length of 'places' and of 'this.obs'

In practice, of course, the lookup.counts table is quite a bit bigger (500 x 40) and I have some 900K observations with places lists of length 1 through length 39.

share|improve this question
a good first step would be to put all this data in one object. I think you can use a data.frame with an entry for each observation. But it is hard to tell from your description. You could also use a nested named list but then you're going to lapply and that isnt "vectorized". – Justin Oct 22 '12 at 16:06
@Justin, data.frame won't accept columns of list type, nor rows with different numbers of columns. – MvG Oct 22 '12 at 16:21
@MvG yeah, but i would propose making multiple rows for the lists (e.g. long vs. wide data) – Justin Oct 22 '12 at 16:34
@Justin, multiple input rows per desired output result would mean tapply or similar, which doesn't feel that much better than lapply. – MvG Oct 22 '12 at 16:39
enter data.table. but I didn't think it through very far, hence my lack of an answer :) – Justin Oct 22 '12 at 16:40
up vote 1 down vote accepted

This appears to work as well:

# More convenient if lookup.counts is a matrix.

# A function that does what the for loop does for each i
test<-function(i) {

# Applies the function for all i
share|improve this answer
Takes my function from hours to seconds. I knew there was a way. Wouldn't have gotten here on my own, and not sure why it is so much faster than MvG's but it is. Thanks. – csfowler Oct 23 '12 at 13:20
If you are interested in learning how to do this yourself, I recommend trying to first make your for loop into a function. Try working with your original function, and just removing the for line and replacing it with test<-function(i). Start from there, and see if you can then sapply your function. Then work on improving the function. – nograpes Oct 23 '12 at 20:00

To vectorize the inner loop, you can use sample or to choose from several alternaives with prescribed probabilities. Unless I read your code incorrectly, you want something like this:

assigned.places[i] <- sample(colnames(this.obs), 1, prob = this.obs)

I'm a bit surprised that you're using colnames(lookup.counts) instead. Shouldn't this be subset by columns as well? It seems that either I missed something, or there is a bug in your code.

the different lengths of your lists are a severe obstacle to vectorizing your outer loops. Perhaps you could use the Matrix package to store that information as sparse matrices. Then you could simply multiply probabilities by that vector to exclude those columns which are not in the places list of a given observation. But as you'd probably still use apply for the above sampling code, you might as well keep the list and use some form of apply to iterate over that.

The overall result might look somewhat like this:

assigned.places <- colnames(lookup.counts)[
  apply(cbind(types, places), 1, function(x) {
    sample(x[[2]], 1, prob=lookup.counts[x[[1]],x[[2]]])

The use of cbind and apply isn't particularly beautiful, but seems to work. Each x is a list of two items, x[[1]] being the type and x[[2]] being the corresponding places. We use these to index lookup.counts just as you did. Then we use the found counts as relative probabilities when choosing the index of one of the columns we used in the subscript. Only after all these numbers have been assembled into a single vector by apply will the indices be turned into names based on colnames.

You can check whether things are faster if you don't cbindstuff together, but instead iterate over the indices only:

assigned.places <- colnames(lookup.counts)[
  sapply(1:length(types), function(i) {
    sample(places[[i]], 1, prob=lookup.counts[types[i],places[[i]]])
share|improve this answer
These both work. Thanks, and thanks for the description of why they work. Very helpful. nograpes' answer is much faster so I am going with that, but your efforts are appreciated. – csfowler Oct 23 '12 at 13:19
@csfowler, you may express your appreciation by pressing that beautiful upward-pointing arrow next to my question. :-) Although you can only accept a single answer, you may well upvote multiple correct and/or useful answers. – MvG Oct 23 '12 at 18:29

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