How to average multiple vectors of different lengths?

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I am taking multiple measurements (50~100) and want to take the mean of the measurements.
Here is how I am going about doing it: I define zero matrix of certain dimension to begin with, for example, zeros(1000,3,50) - each measurement is a matrix of 1000 rows and 3 columns. In this case, the 3rd dimension of 50 is to keep track of the 50 iterations of the measurement.
The issue is that, some measurement will end at row index 500 whereas some others at other row indices. If the longest measurement record the last value at row index 804, then I need to replicate all other measurements' last values up until row index 804 before taking appropriate average of all measurements.
Any ideas would be greatly appreciated!
Thanks,
  4 Commenti
Matt J
Matt J il 17 Giu 2013
Modificato: Matt J il 17 Giu 2013
So you're averaging across the 3rd dimension, not the 1st? You say your input data is 1000x3x50. You therefore want a result that is 1000x3?

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Risposte (2)

Iain
Iain il 17 Giu 2013
When you DON'T have a measurement, ensure that it is "NaN", when you come to take the average, use "nanmean", which ignores the NaN's in the calculations.
nanmean (or mean) can operate on a single dimension at a time...
  2 Commenti
Louis
Louis il 17 Giu 2013
Thanks for the input. However, I don't this this would work. For example, if first measurement is [1;6;5;3;8;NaN] and second measurement is [2;4;7;NaN;NaN;NaN], I would like the last value of the second measurement to be copied to the indices 4 and 5, producing [2;4;7;7;7;NaN] so that they get averaged with the 4th and 5th indices of the first measurement. For the reason, please read over my comment to the previous answer by Matt J.
Iain
Iain il 18 Giu 2013
Modificato: Iain il 18 Giu 2013
Ok.
Don't use nans, use zeros, take the first "slice", and take the "diff" of the rest of it
f = dataset(:,:,1);
d = diff(dataset,1,3);
get rid of the negatives (assuming your data is purely monotonic
d(d<0) = 0;
Put them together
f(:,:,2:(size(d,3)+1)) = d;
Take the cumulative sum:
f = cumsum(f,3);
means = mean(f,chosen_dim);

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John
John il 18 Giu 2013
Are any of your measurements exactly 0? Or, are any of them -1? Instead of initializing with zeros, you could initialize with M = -1*ones(1000,3,50). Then, you can do something like
for i = 1:50
[afterlastrow,c] = find(m(:,:,i)==-1);
lastrow = afterlastrow(1)-1;
m(m(:,1,i)==-1,1,i) = m(lastrow,1,i);
m(m(:,2,i)==-1,2,i) = m(lastrow,2,i);
m(m(:,3,i)==-1,3,i) = m(lastrow,3,i);
end

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