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I'm trying to lag some variables in a DataFrame (and am expressly avoiding using time series), and am getting a funny result. To be precise, I'm trying to assemble a number of lags into a single object, i.e. a 1- and 2-period lag of the column called "orders." Here's what I'm doing:



 lagage<-lag(data$orders, k=-1:-2)

Error in `tsp<-`(`*tmp*`, value = p - (k/p[3L]) * c(1, 1, 0)) : 
invalid time series parameters specified
In addition: Warning messages:
1: In if (k != round(k)) { :
the condition has length > 1 and only the first element will be used
2: In (k/p[3L]) * c(1, 1, 0) :
 longer object length is not a multiple of shorter object length

I'm pretty confused by why I'm getting this error as I've used the lag() function many times before with no issues. Maybe it's a brain fart on my side, but I wanted to check with you guys to see what's going on.


Should have been more clear here-- I'm looking to fill the indexes that are affected with lags by NAs. The lagging I showed above works of I coerce the dataframe to a zoo object, like so:

lagage<-lag(data$orders, k=-1:-3)

  lag-1 lag-2 lag-3
2     76    NA    NA
3     77    76    NA
4     78    77    76
5     79    78    77
6     72    79    78
7     81    72    79
8     79    81    72
9     85    79    81
10    93    85    79
11    81    93    85
12    72    81    93

Of course, I can re-coerce the new data back to a data frame, but want to avoid these steps.

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As far as I can tell, lag's k argument only accepts a single integer. –  joran Jul 29 '13 at 14:29
You should be aware that lag is going to return a time series object, so if you are expressly trying to avoid it (unsure why?) that might not be the best option. Also, are you sure you want k to be negative? –  Ricardo Saporta Jul 29 '13 at 14:38
@RicardoSaporta: I'm sure they want k to be negative. lag uses the unconventional convention that positive values for k mean lag the value forward in time. –  Joshua Ulrich Jul 29 '13 at 14:49
@JoshuaUlrich, good to know, thanks –  Ricardo Saporta Jul 29 '13 at 14:53

2 Answers 2

up vote 2 down vote accepted

Building on the previous answer, try this:

foo <- function(k) c(rep(NA, abs(k)), lag(data$orders, k=k)[abs(k):length(data$orders)])
sapply(-1:-2, foo)

lag for a vector will return a vector of the same length, and when you combine them in a data frame or matrix you'll just get identical series. It doesn't pad with NA's and drop elements at the end, which is what you want when lagging in a data frame or matrix.

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Thanks. Just what I 'm looking for. –  Bryan Jul 29 '13 at 17:18
You're welcome! –  andybega Jul 30 '13 at 13:44

Try the following instead:

 sapply(-1:-2, function(k) lag(data$orders, k=k))

you might want to use , simplify=FALSE if you'd like to preserve the attributes

share|improve this answer
I tried your code, but the sapply function doesn't spit out a lagged matrix -- it just repeats the existing data$orders column. –  Bryan Jul 29 '13 at 14:50
@user1884063, hence my comment about setting simplify to false and keeping the attributes. It's not altogether clear what you expect the output to be. If you could edit your question to include an example, that would be helpful –  Ricardo Saporta Jul 29 '13 at 14:56
Sorry about that. I edited the question above. –  Bryan Jul 29 '13 at 15:07

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