Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I am running a coin-toss simulation with a loop which runs about 1 million times.

Each time I run the loop I wish to retain the table output from the RLE command. Unfortunately a simple append does not seem to be appropriate. Each time I run the loop I get a slightly different amount of data which seems to be one of the sticking points.

This code gives an idea of what I am doing:

N <- 5 #Number of times to run
rlex <-NULL
#begin loop#############################
for (i in 1:N) { #tells R to repeat N number
x <-sample(0:1, 100000, 1/2)
rlex <-append(rlex, rle(x))
}
table(rlex) #doesn't work
table(rle(x)) #only 1

So instead of having five separate rle results (in this simulation, 1 million in the full version), I want one merged rle table. Hope this is clear. Obviously my actual code is a bit more complex, hence any solution should be as close to what I have specified as possible.

UPDATE: The loop is an absolute requirement. No ifs or buts. Perhaps I can pull out the table(rle(x)) data and put it into a matrix. However again the stumbling block is the fact that some of the less frequent run lengths do not always turn up in each loop. Thus I guess I am looking to conditionally fill a matrix based on the run length number?

Last update before I give up: Retaining the rle$values will mean that too much data is being retained. My simulation is large-scale and I really only wish to retain the table output of the rle. Either I retain each table(rle(x)) for each loop and combine by hand (there will be thousands), or I find a programmatic way to keep the data (yes for zeroes and ones) and have one table that is formed from merging each of the individual loops as I go along.

Either this is easyish to do, as specified, or I will not be doing it. It may seem a silly idea/request, but that should be incidental to whether it can be done.

Seriously last time. Here is an animated gif showing what I expect to happen. enter image description here

After each iteration of the loop data is added to the table. This is as clear as I am going to be able to communicate it.

share|improve this question
    
If you're using a for loop, I suggest you pre-allocate your rlex variable to accommodate the result. This will make things run way faster. Suggested reading on optimization: The R Inferno by Pat Burns. –  Roman Luštrik Oct 15 '12 at 12:52
    
I am not really bothered about speed. I have already run the simulation once, and the time it took was reasonable. I am interested in retaining the rle data and accommodating it within my already working code. –  Frank_Zafka Oct 15 '12 at 12:54
1  
I might help to show what you expect to see returned. Anyway, why not have two vectors lengths and values and append each one rather than trying to append a complex list of two vectors. I would allocate storage rather than append but you can deal with that if you don't care about efficiency. I do wonder about having sufficient space to store these data in memory. It is wasteful to store all the information if all you need is the tabular summary. –  Gavin Simpson Oct 15 '12 at 13:10
1  
In response to your second modification of the question: In my answer I show how to force rle to always have the same length if you sample from a factor. Everything in R is easy, once you clearly specify what the problem is. –  Andrie Oct 15 '12 at 13:28
1  
-1 (I did downvote) The question was very unclear about what was wanted at the time. It is getting better but I'm still having to deduce what is wanted from the trail of comments and updates. How about some expected output! If you show that we can dispense with the ambiguity and I can remove the downvote. –  Gavin Simpson Oct 15 '12 at 13:47

3 Answers 3

up vote 7 down vote accepted

OK, attempt number 4:

N <- 5
set.seed(1)
x <- NULL
for (i in 1:N){
  x <- rbind(x, table(rle(sample(0:1, 100000, replace=TRUE))))
}

x <- as.data.frame(x)
x$length <- as.numeric(rownames(x))
aggregate(x[, 1:2], list(x[[3]]), sum)

Produces:

   Group.1     0     1
1        1 62634 62531
2        2 31410 31577
3        3 15748 15488
4        4  7604  7876
5        5  3912  3845
6        6  1968  1951
7        7   979   971
8        8   498   477
9        9   227   246
10      10   109   128
11      11    65    59
12      12    24    30
13      13    21    11
14      14     7    10
15      15     0     4
16      16     4     2
17      17     0     1
18      18     0     1

If you want the aggregation inside the loop, do:

N <- 5
set.seed(1)
x <- NULL
for (i in 1:N){
  x <- rbind(x, table(rle(sample(0:1, 100000, replace=TRUE))))
  y <- aggregate(x, list(as.numeric(rownames(x))), sum)
  print(y)
}
share|improve this answer
    
Although I am sure this works fine, I cannot use this in my (much more complex) code. I will either have to settle for thousands of individual tables (which I will have to combine by hand), or find a solution to my problem as stated in the question. Thanks though. –  Frank_Zafka Oct 15 '12 at 11:47
3  
@RSoul I have answered your question as stated. You now are imposing additional constraints, although you haven't stated what they are. –  Andrie Oct 15 '12 at 11:54
    
@RSoul Since you modified your question to force a loop, I edited my answer. –  Andrie Oct 15 '12 at 13:12
2  
The only thing that is obvious is that a loop is almost never required in R. If you find it frustrating that you don't get your desired response, perhaps it's because your question was vague and ambiguous? We try to help, but none of us have a crystal ball. Also, we find it much easier to help if the OP isn't snarky, and some of your comments have been bordering on the snarky end of the scale. –  Andrie Oct 15 '12 at 13:30
2  
I wonder if you two are talking at crossed purposes? The OP doesn't want the number of 0s or 1s, but the run length data; i.e. $lengths. Even then they seem to only care about the summary not the actual data. And @RSoul, if 4+ SO users are having trouble understanding what it is that you want, I do wonder why you seem to think that it is our fault that we don't get what you want rather than the simpler hypothesis that you need to explain and show us what you want better. I did ask for expected output but you haven't edited that into your question, which would help clear up ambiguities. –  Gavin Simpson Oct 15 '12 at 13:45

Following up @CarlWitthoft's answer, you probably want:

N <- 5
rlex <-NULL
for (i in 1:N) {
    x <-sample(0:1, 100000, 1/2)
    rlex <-append(rlex, rle(x)$lengths)
}

since I think you don't care about the $values component (i.e. whether each run is a run of zeros or ones).

Result: one long vector of run lengths.

But this would probably be a lot more efficient:

maxlen <- 30
rlemat <- matrix(nrow=N,ncol=maxlen)
for (i in 1:N) { 
    x <-sample(0:1, 100000, 1/2)
    rlemat[i,] <- table(factor(rle(x)$lengths,levels=1:maxlen))
}

Result: an N by maxlen table of run lengths from each iteration.

If you only want to save the total number of runs of each length you could try:

rlecumsum <- rep(0,maxlen)
for (i in 1:N) { 
    x <-sample(0:1, 100000, 1/2)
    rlecumsum <- rlecumsum + table(factor(rle(x)$lengths,levels=1:maxlen))
}

Result: an vector of length maxlen of the total numbers of run lengths across all iterations.

And here's my final answer:

rlecumtab <- matrix(0,ncol=2,nrow=maxlen)
for (i in 1:N) { 
   x <- sample(0:1, 100000, 1/2)
   r1 <- rle(x)
   rtab <- table(factor(r1$lengths,levels=1:maxlen),r1$values)
   rlecumtab <- rlecumtab + rtab
}

Result: a maxlen by 2 table of the total numbers of run lengths across all iterations, divided by type (0-run vs 1-run).

share|improve this answer
    
Actually this is near to as far as I have got. I think this is going to retain too much data. I really only need the output of the table(rle(x)), merged after each loop. If that is clear (seemingly not). Thanks though. –  Frank_Zafka Oct 15 '12 at 13:25
    
by "merged" do you mean you want to keep only the total number of runs of each length? You can use colSums(rlemat) to collapse the matrix to totals, or you can set rlecumsum <- rep(0,maxlen) and then rlecumsum <- rlecumsum + table(...) in each loop iteration ... –  Ben Bolker Oct 15 '12 at 13:29
    
Merged meant for each loop. The number of runs at length 1, 2, 3, 4 merged as a total, overall. Is it really that unclear? –  Frank_Zafka Oct 15 '12 at 13:34
    
well, yes, it was: "merged" is pretty vague, as the term also means combining columns of multiple tables into a single table ... showing the desired output of your example in your question is a good way to remove ambiguity. –  Ben Bolker Oct 15 '12 at 13:35
2  
but you still haven't told us what "merge/combine/the two tables into ubertable" means. I gave three answers above, and I still don't know whether any of them is really what you want. If you show desired output, then any answer is clearly and unambiguously correct if it provides the desired output. Is my last answer what you want, or not?? Do you want to keep the results from each run, or only the totals? Do you want to keep the "0 runs" and "1 runs" length distributions separate or are you only interested in the overall run length distribution? –  Ben Bolker Oct 15 '12 at 13:42

You need to read the help page for rle . Consider:

names(rlex)  #"lengths"  "values"  "lengths"  "values" .... and so on

In the meantime, I strongly suggest you spend some time reading up on statistical methods. There is zero (+/- epsilon) chance that running a binomial simulation a million times will tell you anything you won't learn after a few hundred tries, unless your coin has p=1e-5 :-).

share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.