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 trying to compute rolling means of an unbalanced data set. To illustrate my point I have produced this toy example of my data:

ID  year  Var   RollingAvg(Var)
1   2000  2     NA
1   2001  3     2
1   2002  4     2.5
1   2003  2     3
2   2001  2     NA
2   2002  5     2
2   2003  4     3.5

The column RollingAvg(Var) is what I want, but can't get. In words, I am looking for the rolling average of ALL the previous observations of Var for each ID. I have tried using rollapply and ddply in the zoo and the plyr package, but I can't see how to set the rolling window length to use ALL the previous observations for each ID. Maybe I should use the plm package instead? Any help is appreciated.

I have seen other posts on rolling means on BALANCED panel data set, but I can't seem to extrapolate their answers to unbalanced data.

Thanks,

M

share|improve this question
    
I don't understand why is the 5th row of RollingAvg(Var) NA ? –  Jdbaba Apr 19 '13 at 18:34
    
I think it is computing for each ID –  Metrics Apr 19 '13 at 18:37
    
Is your expected output correct? –  Metrics Apr 19 '13 at 18:48
    
@Jdbaba and @user1493368: The ´NA´ s are there because it is the first observation for that ID, and I want the mean of the PREVIOUS observations, so I would like the first observation of RollingAvg(Var) to be NA. –  Mace Apr 19 '13 at 19:03

2 Answers 2

up vote 4 down vote accepted

Using data.table:

library(data.table)
d = data.table(your_df)

d[, RollingAvg := {avg = cumsum(Var)/seq_len(.N);
                   c(NA, avg[-length(avg)])},
    by = ID]

(or even simplified)

d[, RollingAvg := c(NA, head(cumsum(Var)/(seq_len(.N)), -1)), by = ID]
share|improve this answer
2  
you should never use DT$x = ... with data.table this copies the whole table, which is precisely what it tries not to do. Use := instead (read the vignette) –  statquant Apr 19 '13 at 19:16
    
fair enough, fixed –  eddi Apr 19 '13 at 19:23
    
@eddi: Thanks, that works! Still trying to understand what is going on, but I will probably get there :) Is it possible to extend your answer so that the first say 2 observations get coded ´NA´ instead of only the first? (I know it's not in the original question) –  Mace Apr 19 '13 at 19:23
    
sure, what's going on is I compute the cumulative sums and then divide that by the number of observations until then, which is really the definition of the mean that you want (run cumsum and seq_len separately and see what they do); after that I just shift it to the form that you like - if you want to shift it more, just add 2 NA's in front and take out two elements from the tail –  eddi Apr 19 '13 at 19:26

Assuming that years are contiguous within each ID (which is case in the example data) and DF is the input data frame, here is a solution using just base R. cumRoll is a function that performs the required operation on one ID and ave then performs it by ID:

cumRoll <- function(x) c(NA, head(cumsum(x) / seq_along(x), -1))
DF$Roll <- ave(DF$Var, DF$ID, FUN = cumRoll)

The result is:

> DF
  ID year Var Roll
1  1 2000   2   NA
2  1 2001   3  2.0
3  1 2002   4  2.5
4  1 2003   2  3.0
5  2 2001   2   NA
6  2 2002   5  2.0
7  2 2003   4  3.5
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.