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I'm trying to use dcast from the latest package (1.2.1) to denormalize a data frame (or data.table) where the value.var is a POSIXct type, but in the resulting data frame, the date values have lost their POSIXct class and become numeric.

Do I really have to as.POSIXct() every generated column if I want the values back as POSIXct's, or am I missing something?

x <- c("a","b");
y <- c("c","d");
z <- as.POSIXct(c("2012-01-01 01:01:01","2012-02-02 02:02:02"));
d <- data.frame(x, y, z, stringsAsFactors=FALSE);
str(d);
library(reshape2);
e <- dcast(d, formula = x ~ y, value.var = "z");
str(e);

Result of running above statements (note new columns c and d are numeric epoch seconds instead of POSIXct's):

> x <- c("a","b");
> y <- c("c","d");
> z <- as.POSIXct(c("2012-01-01 01:01:01","2012-02-02 02:02:02"));
> d <- data.frame(x, y, z, stringsAsFactors=FALSE);
> str(d);
'data.frame':   2 obs. of  3 variables:
 $ x: chr  "a" "b"
 $ y: chr  "c" "d"
 $ z: POSIXct, format: "2012-01-01 01:01:01" "2012-02-02 02:02:02"
> library(reshape2);
> e <- dcast(d, formula = x ~ y, value.var = "z");
> str(e);
'data.frame':   2 obs. of  3 variables:
 $ x: chr  "a" "b"
 $ c: num  1.33e+09 NA
 $ d: num  NA 1.33e+09
share|improve this question
    
I'm perplexed. If you add new rows so there are no NA values in the resulting data.frame the behavior remains, however, an identical acast call gives the expected POSIXct result. –  Justin Sep 5 '12 at 21:10

1 Answer 1

up vote 7 down vote accepted

Doing debug(dcast) and debug(as.data.frame.matrix), then stepping through the calculations launched by your dcast() call will reveal that these lines in as.data.frame.matrix() are at fault:

if (mode(x) == "character" && stringsAsFactors) {
    for (i in ic) value[[i]] <- as.factor(x[, i])
}
else {
    for (i in ic) value[[i]] <- as.vector(x[, i])
}

The up-to-then POSIXct object has mode "numeric", so evaluation follows the second branch, which converts the results to numeric.

If you use dcast(), it looks like you will need to post-process results, which shouldn't be too hard if you have the correct origin. Something like this (which doesn't quite get the origin right) should do the trick:

e[-1] <- lapply(e[-1], as.POSIXct, origin="1960-01-01")

FWIW, base R's reshape() leaves POSIXct values as they are but will require you to edit the names of the resulting columns...

reshape(d, idvar="x", timevar="y",  direction="wide")
#   x                 z.c                 z.d
# 1 a 2012-01-01 01:01:01                <NA>
# 2 b                <NA> 2012-02-02 02:02:02
share|improve this answer
    
@josh-obrien: Thanks for the quick response and debug info. So the culprit is as.vector which only returns atomic types. Ultimately I'll be using a data.table as I'm doing this for thousands of columns and tens of thousands of rows, so I'll see if the lapply syntax will do the right thing there. –  gkaupas Sep 6 '12 at 18:55
    
Reported here per Hadley's request. –  gkaupas Sep 12 '12 at 17:31

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