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With data as such below, I'm trying to reassign any of the test cols (test_A, etc.) to their corresponding time cols (time_A, etc.) if the test is true, and then find the minimum of all true test times.

     [ID] [time_A] [time_B] [time_C] [test_A] [test_B] [test_C] [min_true_time]
[1,]    1        2        3        4    FALSE     TRUE     FALSE          ?
[2,]    2       -4        5        6     TRUE     TRUE     FALSE          ?
[3,]    3        6        1       -2     TRUE     TRUE      TRUE          ?
[4,]    4       -2        3        4     TRUE    FALSE     FALSE          ?

My actual data set is quite large so my attempts at if and for loops have failed miserably. But I can't make any progress on an apply function.

And more negative time, say -2 would be considered the minimum for row 3.

Any suggestions are welcomed gladly

share|improve this question
You should provide some ideas about how your test looks like, can't make it out from the sample. But most probably ifelse() is what you are looking for. – vaettchen Mar 9 '13 at 15:04
Your data looks weird. It looks like a matrix, but a matrix can only hold one type of data. Do you have a text matrix? – Roland Mar 9 '13 at 15:12
Sorry for the lack of details. But my actual data is a data frame with 400000 observations. I created the test vars based on whether or not another column (describing time_A category) contained any characters from a list of keywords. I only need the min times from those tests that resulted in TRUE. – km5041 Mar 9 '13 at 15:52
up vote 1 down vote accepted

You don't give much information, but I think this does what you need. No idea if it is efficient enough, since you don't say how big your dataset actually is.

#I assume your data is in a data.frame:
df <- read.table(text="ID time_A time_B time_C test_A test_B test_C 
1    1        2        3        4    FALSE     TRUE     FALSE
2    2       -4        5        6     TRUE     TRUE     FALSE
3    3        6        1       -2     TRUE     TRUE      TRUE
4    4       -2        3        4     TRUE    FALSE     FALSE")

#loop over all rows and subset column 2:4 with column 5:7, then take the mins
df$min_true_time <- sapply(1:nrow(df), function(i) min(df[i,2:4][unlist(df[i,5:7])]))
#  ID time_A time_B time_C test_A test_B test_C min_true_time
#1  1      2      3      4  FALSE   TRUE  FALSE             3
#2  2     -4      5      6   TRUE   TRUE  FALSE            -4
#3  3      6      1     -2   TRUE   TRUE   TRUE            -2
#4  4     -2      3      4   TRUE  FALSE  FALSE            -2

Another way, which might be faster (I'm not in the mood for benchmarking):

m <- as.matrix(df[,2:4])
m[!df[,5:7]] <- NA
df$min_true_time <- apply(m,1,min,na.rm=TRUE)
share|improve this answer
This is great. Much appreciated! – km5041 Mar 9 '13 at 17:35
The second method is wonderfully fast. Well done. – km5041 Mar 9 '13 at 17:47

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