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This is a very simple question, but I haven't been able to find a definitive answer, so I thought I would ask it. I use the plm package for dealing with panel data. I am attempting to use the lag function to lag a variable FORWARD in time (the default is to retrieve the value from the previous period, and I want the value from the NEXT). I found a number of old articles/questions (circa 2009) suggesting that this is possible by using k=-1 as an argument. However, when I attempt this, I get an error.

Sample code:



1-2010-12-31 1-2011-12-31 1-2012-12-31 2-2011-12-31 2-2012-12-31 3-2012-12-31 
         50           60           70          120          130          210

1-2010-12-31 1-2011-12-31 1-2012-12-31 2-2011-12-31 2-2012-12-31 3-2012-12-31 
         NA           50           60           NA          120           NA

Error in rep(1, ak) : invalid 'times' argument

I've also read that plm.data has replaced pdata.frame for some applications in plm. However, plm.data doesn't seem to work with the lag function at all:

[1]  50  60  70 120 130 210
[1] 0 5 1

I would appreciate any help. If anyone has another suggestion for a package to use for lagging, I'm all ears. However, I do love plm because it automagically deals with lagging across multiple individuals and skips gaps in the time series.

share|improve this question
I don't know that package, but lag is a generic from the stats package, so the relevant code will be plm:::lag.pseries which may not be coded to handle negative values for k –  GSee Oct 23 '12 at 19:07
Type help(package=plm) and read that lag.pseries has its second argument assigned to "k", so you should try to name your 'lag' argument (and k will default to 1). –  BondedDust Oct 23 '12 at 19:49
DWin - naming the argument (lag(df.plm$data,k=-1) results in the same error. GSee - there don't appear to be any restrictions on what k can be, but the function does use the length of the vector, so you might be correct. –  Matt Oct 23 '12 at 20:03

1 Answer 1

I had this same problem and couldn't find a good solution in plm or any other package. ddply was tempting (e.g. s5 = ddply(df, .(country,year), transform, lag=lag(df[, "value-to-lag"], lag=3))), but I couldn't get the NAs in my lagged column to line up properly for lags other than one.

I wrote a brute force solution that iterates over the dataframe row-by-row and populates the lagged column with the appropriate value. It's horrendously slow (437.33s for my 13000x130 dataframe vs. 0.012s for turning it into a pdata.frame and using lag) but it got the job done for me. I thought I would share it here because I couldn't find much information elsewhere on the internet.

In the function below:

  • df is your dataframe. The function returns df with a new column containing the forward values.
  • group is the column name of the grouping variable for your panel data. For example, I had longitudinal data on multiple countries, and I used "Country.Name" here.
  • x is the column you want to generate lagged values from, e.g. "GDP"
  • forwardx is the (new) column that will contain the forward lags, e.g. "GDP.next.year".
  • lag is the number of periods into the future. For example, if your data were taken in annual intervals, using lag=5 would set forwardx to the value of x five years later.


add_forward_lag <- function(df, group, x, forwardx, lag) {
for (i in 1:(nrow(df)-lag)) {
    if (as.character(df[i, group]) == as.character(df[i+lag, group])) {
        # put forward observation in forwardx
        df[i, forwardx] <- df[i+lag, x]
    else {
        # end of group, no forward observation
        df[i, forwardx] <- NA
# last elem(s) in forwardx are NA
for (j in ((nrow(df)-lag+1):nrow(df))) {
    df[j, forwardx] <- NA

See sample output using built-in DNase dataset. This doesn't make sense in context of the dataset, but it lets you see what the columns do.

add_forward_lag(DNase, "Run", "density", "lagged_density",3)

Grouped Data: density ~ conc | Run
     Run    conc    density lagged_density
1     1  0.04882812   0.017  0.124
2     1  0.04882812   0.018  0.206
3     1  0.19531250   0.121  0.215
4     1  0.19531250   0.124  0.377
5     1  0.39062500   0.206  0.374
6     1  0.39062500   0.215  0.614
7     1  0.78125000   0.377  0.609
8     1  0.78125000   0.374  1.019
9     1  1.56250000   0.614  1.001
10    1  1.56250000   0.609  1.334
11    1  3.12500000   1.019  1.364
12    1  3.12500000   1.001  1.730
13    1  6.25000000   1.334  1.710
14    1  6.25000000   1.364     NA
15    1 12.50000000   1.730     NA
16    1 12.50000000   1.710     NA
17    2  0.04882812   0.045  0.123
18    2  0.04882812   0.050  0.225
19    2  0.19531250   0.137  0.207

Given how long this takes, you may want to use a different approach: backwards-lag all of your other variables.

share|improve this answer
Thanks Katrina! Interesting approach. I have actually since ceased using plm for lagging and leading. I now use the data.table approach in stackoverflow.com/questions/11397771/…, and it works well and is very fast. –  Matt Oct 16 '13 at 15:58

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