How can i create a sequence that every symbol has the same probability as the others?
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Gn Gnk
am 14 Jun. 2020
Bearbeitet: John D'Errico
am 14 Jun. 2020
How can i create a sequence that contains the symbols 0 , 1 , 2 , 3 with the same probability 1/4?
For example i created a sequence with 2 symbols 0 , 1 like this :
Seq = randn(1,N)<0.5 %N= length of the seq and each symbol has 1/2 probability
But i am confused about the 4 symbols any help?
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John D'Errico
am 14 Jun. 2020
Bearbeitet: John D'Errico
am 14 Jun. 2020
Actually, you are wrong in this. randn produces NORMALLY distibuted random numbers.
normcdf(0.5)
ans =
0.69146
So the sequence you generated has 1 appearing almost 70% of the time. Admittedly, sometimes I type randn when I intended to use rand.
N = 1e6;
Seq = randn(1,N) < 0.5;
hist(Seq)
If you wanted to use randn, you needed to compare the elements to ZERO, not 0.5.
Seq = randn(1,N)<0;
You could also have used rand that way, by comparing them to 0.5. Thus:
Seq = rand(1,N)<0.5;
A random sequence with 0,1,2,3 with equal probability is easy enough.
Seq = floor(rand(1,N)*4);
Or you could use randi.
randi([0,3],[1,N])
Finally, each of the above schemes will generate equi-probable sequences of elements, but there is no assurance you will get EXACTLY the same number of events in each bin. That only happens over the long term, where the events will tend to become approximately equal in count. In fact, it is unlikely that you will get EXACTLY equal numbers of events.
For example, given a sequence of 1000 events, what is the probability you would see EXACTLY 500 events in each bin from a true random sampling? This is something we can compute from a binomial distribution.
nchoosek(1000,500)/2^1000
ans =
0.025225
So only 2.5% of the time would we expect an exactly equal count of 500 heads and 500 tails from a fair coin tossed 1000 times.
Anyway, if that is what you want, then Image Analyst has shown you how to do that.
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Image Analyst
am 14 Jun. 2020
Try repelem() and randperm():
numPoints = 1000 % Multiple of 4
v = [0,1,2,3];
n = numPoints / length(v)
vec = repelem(v, n)
randomOrder = randperm(length(vec))
% Scramble them up.
vec = vec(randomOrder);
% Double check
for k = 1 : length(v)
count = sum(vec == v(k));
fprintf('%d shows up %d times.\n', v(k), count);
end
You'll see from the double check:
0 shows up 250 times.
1 shows up 250 times.
2 shows up 250 times.
3 shows up 250 times.
And the numbers will be randomly placed in the vector.
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