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A number of participants (p1, p2, ...) gave proximity ratings for all pairwise combinations of 4 words (w1.w2, w1.w3, ..., w3.w4), giving the following dataframe:

id  w1.w2  w1.w3  w1.w4  w2.w3  w2.w4  w3.w4  
p1      3      1      6      3      5      2
p2      2      3      5      1      6      1
p3 .....

I would like to convert these ratings into a series of matrices to apply multidimensional scaling to them (1 matrix by participant).
I would like to convert my data to the following format:

id  first.wd.in.pair  w2  w3  w4  
p1                w1   3   1   6  
p1                w2       3   5  
p1                w3           2
p2                w1   2   3   5  
p2                w2       1   6  
p2                w3           1  
p3 .....

I've looked into all kinds of reformatting options (e.g. cast in reshape2), but nothing seems to fit my issue.
I've also looked at functions for adjacency matrix (such as get.adjacency() in igraph, but from what I saw it seemed to require something in the following format:

id    first.word   second.word   rating
p1            w1            w2        3  
p1            w1            w3        1  
p1            w1            w4        6  
p1  ....

Thanks in advance for any help!

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You've looked into reformatting options? I don't believe you! Show us your code!!! Pretty please. And what actually you would like as output. Welcome to SO :-) –  Simon O'Hanlon Oct 18 '13 at 17:19
I apologize for not showing the code for my attempts. This was my first question on Stack Overflow (and I'm relatively new to R) and I'll make sure to post a question that includes it next time. –  user2895129 Oct 21 '13 at 13:07

1 Answer 1

up vote 1 down vote accepted

The easiest approach is melt and dcast from "reshape2".

I don't know what you tried, but it is pretty standard-procedure except for one step: splitting the molten "variable" column. Assuming your input data.frame is called "mydf":

dfL <- melt(mydf, id.vars="id")
dfL <- cbind(dfL, colsplit(dfL$variable, "\\.", c("first", "other")))
dcast(dfL, id + first ~ other, value.var="value", fill=0)
#   id first w2 w3 w4
# 1 p1    w1  3  1  6
# 2 p1    w2  0  3  5
# 3 p1    w3  0  0  2
# 4 p2    w1  2  3  5
# 5 p2    w2  0  1  6
# 6 p2    w3  0  0  1

Here, "mydf" is defined as:

mydf <- structure(list(id = c("p1", "p2"), w1.w2 = c(3L, 2L), w1.w3 = c(1L, 
    3L), w1.w4 = c(6L, 5L), w2.w3 = c(3L, 1L), w2.w4 = 5:6, w3.w4 = c(2L, 
    1L)), .Names = c("id", "w1.w2", "w1.w3", "w1.w4", "w2.w3", "w2.w4", 
    "w3.w4"), class = "data.frame", row.names = c(NA, -2L))

Please share your sample data in such a format in the future.

share|improve this answer
I was stuck after the melt step, so the column splitting step you described really solved my issue. The best I had been able to accomplish was to go from wide to long form by using reshape in reshape, which isn't what I need. I wasn't able to use dcast effectively, so this is perfect, many thanks. –  user2895129 Oct 21 '13 at 13:16

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