Defining the 95% of data which are around the mean value

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For a given set of data, how can I define which of those correspond to the 95% of the data which are around the mean value?

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Jan
Jan am 1 Aug. 2013
Bearbeitet: Jan am 1 Aug. 2013
x = rand(1, 1000) - 0.5;
m = mean(x);
dist = abs(x - m);
[sortDist, sortIndex] = sort(dist);
index_95perc = sortIndex(1:floor(0.95 * numel(x)));
x_95percent = x(index_95perc);
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Giorgos Papakonstantinou
Giorgos Papakonstantinou am 1 Aug. 2013
Thank you Jan. It was easier than I expected. Before your answer I was doing the folllowing:
vals=abs(slope);
[CdfY,CdfX] = ecdf(vals,'Function','cdf'); % compute empirical function
cr=CdfY<0.95;
where vals is my dataset.

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Weitere Antworten (2)

Image Analyst
Image Analyst am 31 Jul. 2013
I'd sort the data using sort(). Then use cumsum() to get the cdf. Normalize the CDF then go from the 2.5% element to the 97.5% element using find() to find the elements (values) where the data starts and stops. It's pretty easy, but let me know if you can't figure it out.

Giorgos Papakonstantinou
Giorgos Papakonstantinou am 31 Jul. 2013
Thank you for your answer Image Analyst. The data contain also negative values. I am not sure but I think that poses a problem when I normalize the data after the cumsum.
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Tom Lane
Tom Lane am 1 Aug. 2013
It sounds like Image Analyst is talking about the cumsum of a vector that assigns probability 1/N to each of N points. However, you could take the 0.025*N and 0.975*N values from the sorted vector directly, converting the index to an integer as you see fit.

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