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I have a table Y, comprising of 6 columns. (Date, hour, min , sec , price, size). So now i am supposed to delete entries which have time greater than 4 pm. the entire row of entries must be omitted. I am not quite sure how to proceed with this. So basically we will be looking at the hour column and making the comparison. ex:

Date       hour min sec price size
jan1st     9    45  45  345   100
jan1st     10   23  33  324   20
jan1st     11   02  34  434   10
jan4th     16   05  09  32    23 
jan5th     23   08  23  12    90

So in the above table, I would like to delete the entry that has 16 and 23 under the hours. and hence get rid of the entire row. How would i do that?

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Hey I see you're new to SO. I suggest that you provide a reproducible example (ie a minimal data set and the code to reproduce the error). Also this is a fairly often asked question so you may want to search the archives first. –  Tyler Rinker Apr 12 '12 at 18:58

1 Answer 1

First off, welcome to SO and R. I'd suggest reading a few of the intro guides to getting started in R. here for example as they will answer many of these questions for you.

You need to use [ which is the subset "function" as per my example below. Also, as Tyler mentioned in the comments, if you use something like dput it is quick and easy for people to use your example data.

> dput(dat)
structure(list(Date = c("jan1st", "jan1st", "jan1st", "jan4th", 
"jan5th"), hour = c(9L, 10L, 11L, 16L, 23L), min = c(45L, 23L, 
2L, 5L, 8L), sec = c(45L, 33L, 34L, 9L, 23L), price = c(345L, 
324L, 434L, 32L, 12L), size = c(100L, 20L, 10L, 23L, 90L)), .Names = c("Date", 
"hour", "min", "sec", "price", "size"), class = "data.frame", row.names = c(NA, 

> dat[dat$hour < 16,]
    Date hour min sec price size
1 jan1st    9  45  45   345  100
2 jan1st   10  23  33   324   20
3 jan1st   11   2  34   434   10
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Thanks for the answer. Mine is a huge dataset with about 15,000 rows. Would i be able to make use of this approach? –  Probabilityman Apr 12 '12 at 19:29
15k rows isn't huge by any means! This will work just fine for that. –  Justin Apr 12 '12 at 19:47

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