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I have a data frame where one column is (meant to be) a date in the form 00:00:00.0 yyyy-mm-dd. Most of the entries are, but some are not. Is there a way to delete the rows that contain non-dates? Something like (if the column is "DATE")

data <- data[is.Date(DATE)==TRUE,]

For example.

Fruit  Date
apple  00:00:00.0 2005-02-01
pear   00:00:00.0 2006-02-01
orange 00:00:00.0 -8-2-402145
rhino  00:00:00.0 2003-04-21

I want

Fruit  Date
apple  00:00:00.0 2005-02-01
pear   00:00:00.0 2006-02-01
rhino  00:00:00.0 2003-04-21
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3  
Could you convert them to a date-time format using strptime and then anything that "isn't" a time will end up being NA, and hence easily removed. – joran Oct 4 '12 at 1:14
up vote 2 down vote accepted

Following joran's reasoning:

# get the test data
test <- data.frame(
    Fruit=c("apple","pear","orange","rhino"),
    Date=c("00:00:00.0 2005-02-01",
           "00:00:00.0 2006-02-01",
           "00:00:00.0 -8-2-402145",
           "00:00:00.0 2003-04-21")
)

# remove the rows by checking if not (!) an NA due to not meeting the date format
test[!is.na(strptime(test$Date,format="00:00:00.0 %Y-%m-%d")),]

Result:

  Fruit                  Date
1 apple 00:00:00.0 2005-02-01
2  pear 00:00:00.0 2006-02-01
4 rhino 00:00:00.0 2003-04-21
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