# Iteratively take mean of column in Matlab

Hi I have a column of values in Matlab (PDS(:,39)). This column is filtered for various things and there are two seperate flagging columns (PDS(:,[41 81])) that are either 0 for a valid row or -1 for a non-valid row. I am taking the mean of the valid data, and if the mean is above 0, I'd like to make this value non-valid and take the mean again until the mean is below a certain value (0.2 in this instance). Here is my code:

``````% identify the VALID values
U1 = (PDS(:,81)==0);
F1 = (PDS(:,41)==0);

% only calculate using the valid elements
shearave = mean(PDS(U1&F1,39));

while shearave > 0.2
clear im
% determine the largest shear value overall for filtered and
% non-flagged
[c im] = max(PDS(U1&F1,39));
% make this value a NaN
PDS(im,39)=NaN;
% filter using a specific column and the overall column
PDS(im,41)=-1;
F1 = (PDS(:,41)==0);
% calculate shear ave again using new flagging column - remove the ";" so I can see        the average change
shearave = mean(PDS(U1&F1,39))
end
``````

The output that Matlab gives me is:

shearave =

0.3032

shearave =

0.3032

shearave =

0.3032

etc

The loop is not re-evalulating with the new valid data. How do I solve this problem? Do I have to use a break or continue? Or perhaps a different type of loop? Thanks for any help.

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You don't need to use a loop, I'd do the following:

``````m=PDS(U1&F1,39);
[x isort]=sort(m);
``````

Then calculate the cumulative mean of the sorted vector:

``````y = cumsum(x)./[1:numel(x)]';
``````

Then truncate at 0.2, and retrieve the values needed using the indices found ...

``````ind=find(y<=0.2);
values_needed=m(isort(ind));
``````
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+1, very clever! – s.bandara Jan 13 '13 at 22:19
Yes, I just came to the same conclusion! Sorted it descending and removed the values until the mean was below 0.2, identifying the ones I had to remove by their timestamp. I had a loop in mine though - this will help. Thanks! – user1854628 Jan 13 '13 at 22:26

You iteratively replace values in column 39 with `NaN`. However, `mean` will not ignore `NaN`, but instead return `NaN` as the new average. You can see this with a little experiment:

``````>> mean([3, 4, 2, NaN, 4, 1])
ans = NaN
``````

Therefore, `shearave < 0.2` will never be `true`.

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