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Data: I have data in a dataframe, with column headings "subject_id", "date" and "categorical_value1". Categorical_value1 may have values A, B and C. Each subject ID has multiple rows, but they are not sorted in any particular order.

Question: I would like to create a subset of the data in which categorical_value1 must be = A, and in which only the latest (most recent) date value is selected, for each subject_id. So there will be at most one unique row per subject_id, but possibly no rows for a given subject_id if that id does not have a categorical_value1 = A. Any advice about the most economical way to do this?

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  • Can you structure your text a little bit more? Sep 8, 2015 at 20:54

1 Answer 1

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select c1.subject_id, c1.date, c1.categorical_value1
from Category c1
where c1.categorical_value1 = 'A'
inner join 
select c2.subject_id, max(c2.date) as date, c2.categorical_value1
from Category c2
where c2.categorical_value1 = 'A'
group by c2.subject_id, c2.categorical_value1
on c1.subject_id = c2.subject_id
and c1.date = c2.date
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  • So far not sure how to use suggestion. Example of my problem: set.seed(1234) mydates <- as.Date(sample(c("2007-06-22", "2004-02-13", "2004-03-29", "2001-10-10", "2008-05-05", "2007-03-04"), 10, replace = TRUE)) myids <- sample(c('a001', 'a002', 'a003'), 10, replace = TRUE) mycatvar <- sample(c('A', 'B', 'C'), 10, replace = TRUE) mydf <- data.frame(myids, mydates, mycatvar) Solution should give a001 3/4/07 A a002 10/10/01 A a003 6/22/07 A
    – marcel
    Sep 8, 2015 at 23:31

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