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Efficient way to calculate backwards average

조회 수: 8 (최근 30일)
Lorenzo
Lorenzo 2014년 9월 29일
댓글: John D'Errico 2014년 10월 1일
Dear all,
I'm looking for an efficient way to calculate a backwards moving average, i.e., giving a vector A I want to calculate a vector A2 for which the element i is equal to mean(A(i:end)).
For the moment I am doing it this way:
A=rand(1,1000);
n=length(A);
A2=zeros(1,n)
for i=1:n
A2(i)=mean(A(i:end));
end
Is there any better way?
Thanks
Lorenzo

채택된 답변

John D'Errico
John D'Errico 2014년 9월 29일
편집: John D'Errico 2014년 9월 29일
First of all, what you SAY you are doing makes no sense. A is a 1000x1000 matrix, but A2 only a vector. And you have two i for loops, with only one end. And regardless of what size A is, n=size(A) will produce a vector. So 1:n will yield a problem in the for loop.
The code you show will fail in so many ways I won't bother to count. You should provide working code so someone can know what it is you really want!
Assuming that you really wanted to write this where A is a row vector...
Think about what cumsum does. Then, suppose you flipped the data before calling cumsum.
n = length(A);
A2 = fliplr(cumsum(fliplr(A))./(1:n)));
Of course, this is really not a true moving average, since that would involve a moving window of fixed length. But it is what you asked for.
  댓글 수: 4
Lorenzo
Lorenzo 2014년 9월 30일
편집: Lorenzo 2014년 9월 30일
John, works great, thanks. In case I have a matrix of signals instead of a single vector and I wanted to do what we are doing here with every column of this matrix, I can either loop trough the column and use you code above or do this:
c2=size(A);
rows=c2(1);
columns=c2(2);
A2=flipud(cumsum(flipud(A))./repmat((1:rows)',1,columns));
do you see any better way?
Thanks
Lorenzo
John D'Errico
John D'Errico 2014년 10월 1일
That will work fine, although a minor optimization would be to use bsxfun to do the divide instead of replicating the vector using repmat.
A2=flipud(bsxfun(@rdivide,cumsum(flipud(A)),(1:rows)'));

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추가 답변 (4개)

José-Luis
José-Luis 2014년 9월 29일
numRows = 100;
numCols = 100;
data = rand(numRows,numCols);
result = flipud(bsxfun(@rdivide,cumsum(flipud(data)),(1:numRows)));
  댓글 수: 1
Lorenzo
Lorenzo 2014년 9월 30일
Thanks José. I'm getting something weird at the end of the signal though… In case of a vector it should be:
result(end)=data(end)
but I'm not getting this with your method…

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Chad Greene
Chad Greene 2014년 9월 29일
This is a very fast moving average calculator. It centers data, so if you use an N-point moving average, after calculating the moving averaged, you could shift by N/2 to get the "backwards" moving average.
  댓글 수: 1
Image Analyst
Image Analyst 2014년 9월 29일
He doesn't want a moving average. His window is not constant length, but gets shorter as the index approaches the end of the array.

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SK
SK 2014년 9월 29일
편집: SK 2014년 9월 29일
s = sum(A);
n = length(A);
A2 = (s - cumsum(A))/n;
is a little more elegant and I would think faster. But you have to add s/N to the beginning of A2 and remove the 0 at the end of A2.
The last operation (removing the zero) is misleadingly innocent:
A2(end) = [];
But you may soon get to know the consequences of it.
  댓글 수: 1
Lorenzo
Lorenzo 2014년 9월 30일
Thanks SK. This doesn't seem to do what I need though… not sure what it is supposed to do…

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Lorenzo
Lorenzo 2014년 9월 30일
편집: Lorenzo 2014년 9월 30일
Thanks everybody for the answers.
With a vector of 50k elements I get the following run time:
my method: 10.17 s
John's method: 0.006 s
  댓글 수: 1
Stephen23
Stephen23 2014년 9월 30일
Unless you are actually answering your own question, write a comment to your original question or one of the answers. There is no guarantee that the answers remain in any particular order...

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