Vectorization of while loop

Hi all,
I have a small function, which generates random numbers in a specific interval. The function tests the generated values in respect to a certain bound and recalculates the random numbers again, if the bound is violated. I have to call this function several times (in this case 60 000 times), so this takes a lot of time (3/4 of the total time). I have read about vectorizing the code to improve performance. But I am totally helpless with this task. Your help would be greatly appreciated.
However, if someone has an idea to rewrite the while loop in a different way that would be great, as well.
Michi
Code:
meanValue = 10;
devValue = 1;
numValues = 10000;
presumption = 1;
for i = 1:60000
arrayValues = RandomNums(meanValue, devValue, numValues, presumption);
end
function arrayValues = RandomNums (meanValue, devValue, numValues, presumption)
%% create rand nums
% normally distributed with meanValue +/- devValue
numValues = round(numValues);
arrayValues = devValue*randn(numValues,1) + meanValue;
% check confidence-limes for each value and create new one if outside
for idx = 1:numel(arrayValues)
while (arrayValues(idx) > (meanValue + presumption*devValue) || arrayValues(idx) < (meanValue - presumption*devValue))
arrayValues(idx) = devValue*randn(1,1,'double') + meanValue;
end
end
end
Performance:

2 Comments

You should look for "truncated gaussian" distribution, and posts how to generate them.
Hi Bruno,
thank you for your reply. I've tried that, but as far as I understand, it does not make it better. Maybe, I have missed /missunderstood something?
Thanks again!
Code with Comparison:
meanValue = 10;
devValue = 1;
numValues = 10000;
presumption = 1;
for i = 1:10
arrayValues = RandomNums(meanValue, devValue, numValues, presumption);
a = ["arrayValues1",num2str(i)];
disp(a)
pause(0.00001);
end
for ii = 1:10
arrayValues2 = RandomNums2(meanValue, devValue, numValues, presumption);
a = ["arrayValues2",num2str(ii)];
disp(a)
pause(0.00001);
end
function arrayValues = RandomNums (meanValue, devValue, numValues, presumption)
%% create rand nums
% normally distributed with meanValue +/- devValue
numValues = round(numValues);
arrayValues = devValue*randn(numValues,1) + meanValue;
% check confidence-limes for each value and create new one if outside
for idx = 1:numel(arrayValues)
while (arrayValues(idx) > (meanValue + presumption*devValue) || arrayValues(idx) < (meanValue - presumption*devValue))
arrayValues(idx) = devValue*randn(1,1,'double') + meanValue;
end
end
end
function arrayValues2 = RandomNums2 (meanValue, devValue, numValues, presumption)
%% create rand nums
% normally distributed with meanValue +/- devValue
numValues = round(numValues);
pd = makedist('Normal','mu',meanValue,'sigma',devValue);
confidence = presumption*devValue;
t = truncate(pd,meanValue - confidence,meanValue + confidence);
arrayValues2 = random(t,numValues);
end
Performance:

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 Accepted Answer

meanValue = 10;
devValue = 1;
numValues = 1000000;
presumption = 2;
tic
% Function from here https://www.mathworks.com/matlabcentral/fileexchange/23832-truncated-gaussian
arrayValues = meanValue + TruncatedGaussian(-devValue, presumption*[-1 1], [1 numValues]);
toc % Elapsed time is 0.055511 seconds for one billions random numbers.
% Check histogram
hist(arrayValues,100)
Histogram obtained

3 Comments

wow, this is so fast.
Thank you!
Can you give me a hint, why it is that fast compared to my initial approach?
It mainly because it uses different method (non rejection) and inverse error function.
Ok, thank you

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More Answers (1)

elchico
elchico on 2 Oct 2020
Hi Bruno,
one more question to your code: Do you have something similar with Poisson Distribution etc.?
Thanks.

2 Comments

Unfortunately no.
okay, that is sad for me but: thanks anyways ;-)
May I ask you what is the difference in performance between your code (so fast!) compared to my initial Gauss code? I have to explain this and I am not totally sure about it ...

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R2019b

Asked:

on 15 Jul 2020

Commented:

on 3 Oct 2020

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