Does anyone know if it is possible to calculate a weighted mean in R when values are missing, and when values are missing, the weights for the existing values are scaled upward proportionately?

To convey this clearly, I created a hypothetical scenario. This describes the root of the question, where the scalar needs to be adjusted for each row, depending on which values are missing.

Image: Weighted Mean Calculation

File: Weighted Mean Calculation in Excel

  • It's definitely possible to do in R. Try having a go yourself and posting some example code here where you run into problems. – QuishSwash Oct 1 '17 at 22:52
  • Thanks qqq. There are many similar samples of code in related questions, link, but it seems like most want to mutate, or replace with the mean, or replace with zero, when there is an N/A. Without being a burden and asking the same question, I thought it might be easier to show the explicit difference with my case, where I want to re-scale the remaining variables. I hadn't seen that elsewhere. And it might just be an obvious, short answer, by using na.rm. – milaske Oct 1 '17 at 23:10

Using weighted.mean from the base stats package with the argument na.rm = TRUE should get you the result you need. Here is a tidyverse way this could be done:

scores <- tribble(
 ~student, ~test1, ~test2, ~test3,
   "Mark",     90,     91,     92,
   "Mike",     NA,     79,     98,
   "Nick",     81,     NA,     83)

weights <- tribble(
  ~test,   ~weight, 
  "test1",     0.2, 
  "test2",     0.4,
  "test3",     0.4)

scores %>% 
  gather(test, score, -student) %>%
  left_join(weights, by = "test") %>%
  group_by(student) %>%
  summarise(result = weighted.mean(score, weight, na.rm = TRUE))
#> # A tibble: 3 x 2
#>   student   result
#>     <chr>    <dbl>
#> 1    Mark 91.20000
#> 2    Mike 88.50000
#> 3    Nick 82.33333
  • Thank you @markdly. I suppose there was a much easier way to ask the question without charts and excel files. What I didn't understand based on the documentation was the effect of na.rm. By making that TRUE, you confirmed that it solves the root of my problem, which is automatically scaling the existing weights based on the variables with data. I thought it was going to be much more difficult because the missing variables are different row by row. Thanks again. – milaske Oct 1 '17 at 23:16

The best way to post an example dataset is to use dput(head(dat, 20)), where dat is the name of a dataset. Graphic images are a really bad choice for that.

dat <-
structure(list(Test1 = c(90, NA, 81), Test2 = c(91, 79, NA), 
    Test3 = c(92, 98, 83)), .Names = c("Test1", "Test2", "Test3"
), row.names = c("Mark", "Mike", "Nick"), class = "data.frame")

w <-
structure(list(Test1 = c(18, NA, 27), Test2 = c(36.4, 39.5, NA
), Test3 = c(36.8, 49, 55.3)), .Names = c("Test1", "Test2", "Test3"
), row.names = c("Mark", "Mike", "Nick"), class = "data.frame")

You can use function weighted.mean in base package statsand sapply for this. Note that if your datasets of notes and weights are R objects of class matrix you will not need unlist.

sapply(seq_len(nrow(dat)), function(i){
    weighted.mean(unlist(dat[i,]), unlist(w[i, ]), na.rm = TRUE)
  • Thank you. There are many related posts with similar data and code, and I suppose the reason I posted the image was to explicitly show the importance of scaling the existing factors, which I hadn't seen elsewhere. In the documentation link, na.rm is a logical value indicating whether NA values in x should be stripped before the computation proceeds. You show this as TRUE. Does this handle the re-weighting automatically? – milaske Oct 1 '17 at 23:03
  • @milaske I believe that yes, like the link says the weights coerced to numeric by as.numeric and normalized to sum to one. And in my tests the results were equal to yours, with some rounding problems only. – Rui Barradas Oct 2 '17 at 0:47

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