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I have a dataset consisting of monthly observations for returns of US companies. I am trying to exclude from my sample all companies which have less than a certain number of non NA observations.

I managed to do what I want using foreach, but my dataset is very large and this takes a long time. Here is a working example which shows how I accomplished what I wanted and hopefully makes my goal clear

#load required packages

#example data
myseries <- data.table(
 X = sample(letters[1:6],30,replace=TRUE),
 Y = sample(c(NA,1,2,3),30,replace=TRUE))

setkey(myseries,"X") #so X is the company identifier

#here I create another data table with each company identifier and its number 
#of non NA observations
nobsmyseries <- myseries[,list(NOBSnona = length(Y[complete.cases(Y)])),by=X]

# then I select the companies which have less than 3 non NA observations
comps <- nobsmyseries[NOBSnona <3,]

#finally I exclude all companies which are in the list "comps", 
#that is, I exclude companies which have less than 3 non NA observations
#but I do for each of the companies in the list, one by one, 
#and this is what makes it slow.

for (i in 1:dim(comps)[1]){
myseries <- myseries[X != comps$X[i],]

How can I do this more efficiently? Is there a data.table way of getting the same result?

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2 Answers 2

up vote 2 down vote accepted

If you have more than 1 column you wish to consider for NA values then you can use complete.cases(.SD), however as you want to test a single columnI would suggest something like

naCases <- myseries[,list(totalNA  = sum(!,by=X]

you can then join given a threshold total NA values


threshold <- 3
myseries[naCases[totalNA > threshold]]

you could also select using not join to get those cases you have excluded

 myseries[!naCases[totalNA > threshold]]

As noted in the comments, something like

myseries[,totalNA  := sum(!,by=X][totalNA > 3]

would work, however, in this case you are performing a vector scan on the entire data.table, whereas the previous solution performed the vector scan on a data.table that is only nrow(unique(myseries[['X']])).

Given that this is a single vector scan, it will be efficient regardless (and perhaps binary join + small vector scan may be slower than larger vector scan), However I doubt there will be much difference either way.

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As a data.table novice, would something like: myseries[,i:=sum(,by=X][i < 3] work? – thelatemail Feb 27 '13 at 0:34
@thelatemail Yes! The only reason I used complete cases, was in case in their real example had more than one column they were interested in. The reason I used a join + vector scan is that my vector scan will be slightly faster (as it is a smaller data.table). The speed difference would be (almost certainly) negligible – mnel Feb 27 '13 at 0:40
@mnel Actually my data table has many columns but I am only interested in testing one of the columns for NAs (the column which contains the returns). Also, your solution seems to count the number of NAs, but I want to count the number of non NAS (I don't care how many NAs there are or there are not, as long as I have at least "threshold" number of non-NA observations). I adapted the code to my needs and it seems to work, but I am still working on it. – Vivi Feb 27 '13 at 0:50
@Vivi I've adjusted the answer. – mnel Feb 27 '13 at 0:55
That's the problem with giving simple examples. I am running into a problem with the real data. The join line is giving me an error: TM' is a character column being joined to i.'PERMNO' which is" type 'integer'. Character columns must join to factor or character columns.". Do you know what this is? Is it simple to solve? (TM and PERMNO are both keys in my data.table) – Vivi Feb 27 '13 at 2:02

How about aggregating the number of NAs in Y over X, and then subsetting?

# Aggregate number of NAs
num_nas <-, data=myseries, FUN=function(x) sum(!

# Subset
myseries[!X %in% num_nas$X[Y>=3],]
share|improve this answer
I will try now with my dataset and see if I understand your way, cheers – Vivi Feb 27 '13 at 0:36
Great. Just noticed I had it backwards (was selecting X with less than 3 non-NA Y, num_nas$X[Y<3]) and fixed it in the code. The problem is I gave a bad name to the aggregate (num_nas, when actually I was counting the number of complete cases!) – Oscar de León Feb 27 '13 at 0:41
Why would you use aggregate instead of data.table? This is not a more efficient method, and definitely NOT a data.table solution. – mnel Feb 27 '13 at 0:41
Ha, it is certainly more efficient than the for(...) loop, just like @Vivi asked. And you already provided a data.table solution, so I provided an alternative, non-data-table one. So, why the pip? – Oscar de León Feb 27 '13 at 0:46
I will probably choose the data.table way in the end for a number of reasons, but any solution which is faster than mine is really helpful (especially since I am still learning R!). – Vivi Feb 27 '13 at 0:55

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