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I have a squirrelly dataset drawn from a Qualtrics survey. It looks like this:

V3       Q8_42  Q8_33  Q8_72   Q8_38  Q13_1_42 Q13_1_33 Q13_1_72 Q13_1_38
Chap A     .    1       .        .       .      4        .        .
Chap B     1    .       .        .       4      .        .        .
Chap C     .    .       .        .       .      .        .        .
Chap D     .    .       .        .       .      .        .        .

The snapshot shows four individuals asked if they are friends (q8_42 is A; q8_33 is B, q8_72 is C, and q8_38 is D). If someone says they are friends then they are asked about the strength of their friendship on a 1-5 scale (q13_1_42 is for A, q13_1_33 is for B, q13_1_72 is for C, and q13_1_38 is for D). In all I have 95 individuals and there are in all 9 questions posed to them re: their friendship. How should I be running matrix operations such that I end up with the following matrix, 1 per friendship question:

       Chap A   Chap B  Chap C  Chap D
Chap A  0       4       .       .
Chap B  4       0       .       .
Chap C  .       .       0       .
Chap D  .       .       .       0

My solution has been to read the data (named "kolp") into R, then run

Chap.A <- (kolp$q8_42 * kolp$q13_1_42)
Chap.B <- (kolp$q8_33 * kolp$q13_1_33)
Chap.C <- (kolp$q8_72 * kolp$q13_1_72)
Chap.D <- (kolp$q8_38 * kolp$q13_1_38)
Mat.1 <- cbind(Chap.A, Chap.B, Chap.C, Chap.D)
rownames(Mat.1) <- c("Chap.A", "Chap.B", "Chap.C", "Chap.D")

This gives me

         Chap.A Chap.B Chap.C Chap.D
Chap.A     NA      4     NA     NA
Chap.B      4     NA     NA     NA
Chap.C     NA     NA     NA     NA
Chap.D     NA     NA     NA     NA

But I know this is the clunky way to go about it, especially with 9 matrices to extract as *.csv or *.txt files, with dim of 95x95

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1 Answer 1

Assuming the columns are in the form "questionID_individualID", you can try this function to process your data:

f <- function(dat)
{
    n <- names(dat)

    id <- substring(n, nchar(n)-1)

    qu_id <- substring(n, 1, nchar(n)-3)

    individuals <- sort(unique(id))

    questions <- unique(qu_id)

    result <- 1

    for(q in questions)
    {
        filter <- qu_id==q

        result <- result * dat[,filter][,match(individuals, id[filter])]
    }

    result

    colnames(result) <- individuals

    result
}

use as f(kolp). It works even if the columns are out of order. But it will fail (or give wrong results) if some questions do not have columns for all individuals.

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thanks @Ferdinand.kraft ... I'll give it a whirl today and see how it works. –  user1433981 Mar 28 '13 at 13:37

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