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I need to extract the number of observations between min and max. I know that I can subset the data, creating a new DF then calculate length but am interested in a less involved process. For example, I have and would like number of observations from min to max,

 ddd <- mydf[,list(minVar1 = min(Var1, na.rm=TRUE),
         maxVar1 = max(Var1, na.rm=TRUE)), by="Group"]

Is there a direct approach without an intermediate DF? Thanks.

Edit: I guess this is a bit more complicated than originally stated. For Group = 1, the minimum value is actually 2 however I need minimum indexed lower than max value index/position. So, that range is 3 to 7 for a length of 3. The Idx variable scores the measured index/position of Var1. So, max position of Var1 must be first identified, then insure that the min position is extracted from Idx less than that of the max position.

Group Var1 Idx
1 3 4
1 5 5
1 7 6
1 3 7
1 2 8
2 5 12
2 6 13
2 9 14
2 11 15
2 5 16

Group min max length
1 3 7 3
2 5 11 4
  • 3
    Looks like you are using data.table syntax. Please show some example and expected output. – akrun Aug 30 '15 at 20:01
  • Interesting question. Here is a base R solution with the mtcars dataset (for the variable hp for example): length(unique(mtcars[order(mtcars$hp), "hp"])) – SabDeM Aug 30 '15 at 20:03
  • What if there are ties? It is not clear about the number of observations. – akrun Aug 30 '15 at 20:16
  • Sorry, I didn't get the reason why you are changing the min value from 2 to 3. – akrun Aug 30 '15 at 20:23
  • @ksing Why is length equal to 4 for Group 2, and not 2 (5 < {6, 9} < 11)? – nrussell Aug 30 '15 at 20:26
2

By using data.table, we could get the expected output. We convert the 'data.frame' to 'data.table' (setDT(df1)). Grouped by 'Group', we order the 'Idx', get the position of the maximum value of 'Var1' ('ind'), then we get the position of minimum value of 'Var1' that is lower than 'ind' ('ind2'). We summarise and create the columns 'min' and 'max' by indexing 'ind2' and 'ind' on 'Var1' while the 'length' is created by the taking the difference of 'Idx' using the same 'ind', 'ind2' and adding 1.

library(data.table)
setDT(df1)[order(Idx), {ind <- which.max(Var1)
                       ind2=which.min(Var1[seq(ind)])
                       list(min=Var1[ind2], 
                            max=Var1[ind], 
                            length=Idx[ind]-Idx[ind2]+1)} , Group]
#   Group min max length
#1:     1   3   7      3
#2:     2   5  11      4
| improve this answer | |
  • Thanks. I'll give that a try. It looks like i tried the following weeks ago maxVar1 <- mydf[, .SD[which.max(Var1)], by = "Group"], maxIdxVar1 <- maxindexVar1[ ,list(Group, Idx)], minVar1 <- mydf[, .SD[which.min(Var1)], by = "Group"], minIdxVar1 <- minindexVar1[ ,list(Group, Idx)]. So, that just identifies the min and max Idx of Var1. – ksing Aug 30 '15 at 20:52
2

Using dplyr:

library(dplyr)
dat %>% group_by(Group) %>%
        summarise(min = min(Var1[1:which.max(Var1)]),
                  max = max(Var1), 
                  diff = 1 + which.max(Var1) - which.min(Var1[1:which.max(Var1)]))

Source: local data frame [2 x 4]

  Group min max diff
1     1   3   7    3
2     2   5  11    4
| improve this answer | |
  • Thank you. I'll give this a try. – ksing Aug 30 '15 at 21:03

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