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I have two dataframes like below.

dfu is sort of a look up table for probability of presence of properties per id based on past studies - stored as prop1, prop2 and so on. dfi contains a bunch of ids found in an experiment - not all ids in dfu may be present and one or more ids not present in dfu may be present in dfi

> set.seed(100)
> dfu <- data.frame(id=rep(1:6,1, replace = FALSE), prop1=sample(0:10 / 10,6, replace=TRUE), prop2=sample(0:10 / 10,6 , replace = TRUE) )
> dfu
  id prop1 prop2
1  1   0.8   0.3
2  2   0.4   0.4
3  3   0.6   0.8
4  4   0.1   0.7
5  5   0.6   0.2
6  6   0.9   0.3
> dfi <- data.frame(id = c(sample(1:3, 6, replace = TRUE),7))
> dfi
  id
1  2
2  3
3  2
4  1
5  2
6  3
7  7

With dfu, given dfi I need to compute the presence per property for the whole population of ids in dfi on a per property basis. This could be done by counting the number of occurrences per id in dfi and then take a weighted average per property. The ids not present in dfu may be excluded from the weighted average as no presence per property values are available for them.

So for prop1 it would be like (0.8*1 + 0.4*3 + 0.6*2)/(1 + 3 + 2) = 0.53 - 1,3,2 used here are occurrences of ids 1, 2 & 3 respectively in dfi.

The output would be like below

prop1   prop2
0.5333     0.5167

prefer base R approach, other approaches welcome. The number of columns could be many.

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2 Answers 2

4

We can use base R apply column - wise to calculate the weighted mean for every column in dfu.

apply(dfu[-1], 2, function(x) weighted.mean(x[match(dfi$id, dfu$id)]))

#prop1     prop2 
#0.5333333 0.5166667 

EDIT

As per edit if there are cases when there are id's in dfi which are not present in dfu we can use the answer with nomatch argument

apply(dfu[-1], 2, function(x) weighted.mean(x[match(dfi$id, dfu$id, nomatch = 0)]))
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  • @akrun could you please tell me how? and no need to copy an "incorrect" approach.
    – Ronak Shah
    Feb 8, 2017 at 5:47
  • You can check the OP's input data
    – akrun
    Feb 8, 2017 at 5:49
  • What did I copy? I have an approach using data.table. weighted.mean is not patented to you
    – akrun
    Feb 8, 2017 at 5:50
  • @RonakShah - this answer works well, when dfi contains only ids present in dfu. However if dfi contains an id not present in dfu, it gives the weighted avg. as NAs Feb 8, 2017 at 7:31
  • @user3206440 Just update with nomatch argument. See answer.
    – Ronak Shah
    Feb 8, 2017 at 7:36
1

We can use data.table. Convert the 'data.frame' to 'data.table' (setDT(dfu)), do a join with 'dfi' on the 'id' column, loop through the columns mentioned in .SDcols and get the weighted.mean

library(data.table)
setDT(dfu)[dfi, lapply(.SD, weighted.mean) ,on = .(id), .SDcols = prop1:prop2]
#      prop1     prop2
#1: 0.5333333 0.5166667

If we have elements in 'dfi' that are not in 'dfu', use the nomatch = 0

setDT(dfu)[dfi, lapply(.SD, weighted.mean) ,on = .(id), nomatch = 0, .SDcols = prop1:prop2]

data

dfu <- structure(list(id = 1:6, prop1 = c(0.8, 0.4, 0.6, 0.1, 0.6, 0.9
), prop2 = c(0.3, 0.4, 0.8, 0.7, 0.2, 0.3)), .Names = c("id", 
"prop1", "prop2"), class = "data.frame", row.names = c(NA, -6L
))

dfi <- structure(list(id = c(2L, 3L, 2L, 1L, 2L, 3L)), .Names = "id", 
class = "data.frame", row.names = c("1", "2", "3", "4", "5", "6"))
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