I have a matrix of data values that looks a bit like this, though significantly larger (2000+ rows, 30+ columns):
NaN 12 3 NaN 18 NaN 42 NaN NaN NaN NaN... 68 NaN 14 Nan NaN NaN NaN NaN NaN NaN 26 ... ...
So you see that is largely populated by NaN values. What I am interested in, naturally, are the cells that are populated by values.
I want to be able to run anovan on this data set, and unfortunately it is too large to reformat by hand. What I want to do is have a script run through the matrix, find every value that is not NaN and its index in the matrix, and create three arrays for the anovan input:
Values=[ 12 3 18 42 68 14 26 ...]
Rows= [ 1 1 1 1 2 2 2 ...]
Columns= [ 2 3 5 7 1 3 11 ...]
The rows and columns correspond to raters and ratees in a study, which is why they it is so important for me to preserve the exact index of each value.
I cannot figure out how to do this, though.
I have tried using find, but can't get it to do what I want.
[r c v] = find(~isnan(datamatrix)) %% doesn't work
EDIT: It occurs to me I could just do:
[r c v] = find(datamatrix)
This will include all of the NaN values, in the [r c v] output, though. In that situation, how would I go through the V array and delete the NaN values AND their corresponding R and C values?
EDIT2: Scratch that. I forgot that some of my values are 0, so I can't use the FIND command.