How to effectively run loops and save time in computation? I have a matrix of size 'm' and run five loops from 1 to m. The logic is explained below. How to optimize the code and save time of calculation.
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SanthoshKumar C
il 20 Feb 2018
Commentato: SanthoshKumar C
il 21 Feb 2018
I need to find projection statistics for my matrix of size 'm' by initially calculating the sum of all possible observations (using logic as in code-Rousseuuw and Croux method). This needs a quite a large number of iterations. When my matrix size is 1000x1000, it takes close to 250seconds for this code to complete. Can someone help me in optimizing the code below thereby reducing the operation time.
m=1000;
H=rand(m);
rng default;
x=zeros(m,1);
y=zeros(m,1);
output1 = zeros(m,1);
output = zeros(m,1);
PS = zeros(m,1);
for k=1:m
for i=1:m
for j=1:m
if j~=i
x(j)=abs(H(i,k)+H(j,k));
end
end
mask=x~=0; % mark the non-zero elements
x=x(mask); % keep the non-zero elements
y(i)=median(x);
x=zeros(m,1); %Clearing x after calculating median and proceed to next iter
end
y(y==0)=NaN;
output1(k)=1.1926*nanmedian(y);
end
for k=1:m
for i=1:m
output(i)=abs(H(k,i))/output1(i);
end
PS(k,1)=max(output);
end
Even after making the suggestions in comments, the computation time is still high. Without pre-initialising, - 250s With pre-initialising - 250s After changing namedian to median - 200s (recent)
4 Commenti
Guillaume
il 20 Feb 2018
Modificato: Guillaume
il 20 Feb 2018
Also I'm fairly certain that your code contains a bug because of the if j~=i because you never erase x. So when j == i you reuse the x(j) value calculated in a previous iteration. For example at the last step of the loop, the first m-1 elements of x are those calculated for j=1:m-1 and i = m, but the last element is the one calculated at the previous i step, hence j = m and i = m-1
%at step k = m, j=m, x is:
x = [abs(H(1:m-1, m) + H(m, m)); abs(H(m-1, m) + H(m, m))].'
If you had
for k=1:m
for i=1:m
x = zeros(1, m);
for j=1:m
%...
You'd get a very different result
Risposta accettata
Andrei Bobrov
il 20 Feb 2018
Modificato: Andrei Bobrov
il 21 Feb 2018
a = abs(H + permute(H,[3,2,1])).*permute(diag(nan(m,1))+ones(m),[1,3,2]);
a(a == 0) = nan;
b = 1.1926*median(median(a,3,'omitnan'));
PS = max(abs(H./b(:)'),[],2);
other variant
m = 1000;
H = rand(m);
b = zeros(m);
for k = 1:m
a = abs(H(:,k) + H(:,k).');
% a = abs(bsxfun(@plus,H(:,k),H(:,k).')); - for MATLAB <= R2016a
a(1:m+1:end) = nan;
a(a == 0) = nan;
b(:,k) = median(a,2,'omitnan');
end
c = 1.1926*median(b);
PS = max(abs(H./c(:)'),[],2);
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Più risposte (1)
Jos (10584)
il 20 Feb 2018
A few observations:
- you should pre-allocate x, y and output before the loops
- H(i,k) + H(j,k) equals H(j,k)+H(i,k), so you can half the computation time by having j running from i+1 to m.
- this will also make the "if i~=j" redundant!
- after removing all zeros from x using mask, the statement x(x==0) = NaN not needed!
- therefore you can use the faster median rather than nanmedian
2 Commenti
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