As mentionned in @Chase's comment, you can use directly your dates in `cor`

if you transform them into numeric objects with `as.numeric`

.

```
#First some dummy data:
age<-ceiling(runif(20,min=25,max=45))
joindate<-sample(seq(as.Date("01/01/1990","%d/%m/%Y"),
as.Date("31/12/2010","%d/%m/%Y"), by="day"), 20)
age
[1] 35 33 33 30 39 30 32 26 45 37 28 44 35 31 39 44 44 40 29 39
joindate
[1] "1999-07-03" "2006-08-09" "2001-11-22" "2003-02-11" "1991-06-23" "2007-04-20" "1993-04-28" "1997-04-08" "1999-08-16"
[10] "2005-02-17" "2002-11-01" "1991-09-17" "2006-05-03" "1995-12-02" "2007-06-20" "2000-02-26" "2005-10-01" "1997-06-13"
[19] "2007-06-09" "1994-11-27"
as.numeric(joindate)
# Dates are transformed into a number that corresponds to the number of days since the origin date (as a convention the 1970/01/01)
[1] 10775 13369 11648 12094 7843 13623 8518 9959 10819 12831 11992 7929 13271 9466 13684 11013 13057 10025 13673 9096
cor.test(age, as.numeric(joindate))
Pearson's product-moment correlation
data: age and as.numeric(joindate)
t = -0.9641, df = 18, p-value = 0.3478
alternative hypothesis: true correlation is not equal to 0
95 percent confidence interval:
-0.6048037 0.2449517
sample estimates:
cor
-0.2215884
```

`as.numeric()`

? I've not through what possible impacts this has on the interpretation...but that should satisfy`cor()`

. – Chase Oct 2 '12 at 0:42can, butshouldyou? – Joshua Ulrich Oct 2 '12 at 0:50`arima()`

? – Chase Oct 2 '12 at 0:56