Matlab Loss of precision computing variance

I have this vector [10000000000 10000000001 10000000002]

and i try to calculate its variance using this formula

i calculate it but the answer that i get is 3.33333333466667e+19 which is wrong, because the correct answer is 1.

What i am doing wrong?

the MATLAB code is

``````    total=0;
m1=data(1);
m2=(data(2)-m1)/2;
q1=0;
q2=q1+(((2-1)/2)*((data(2)-m1)^2));
q3=q2+(((3-1)/3)*((data(3)-m2)^2));
variance=q3/(3-1)
``````

Thanks

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Did you forget the `m3 = (datos(3)-m2)/3` step? (Not that I have a clue why you do that, I just noticed a missing step from your image...) –  sarnold May 4 '12 at 1:30
i dont need m3 because the q3 formula only requires to have the value of q2 –  eleaz28 May 4 '12 at 1:32

M is a mean calculation, it is supposed to be

``````Mk = ((k-1) M(k-1) + xk)/k
``````

thus

``````m1=data(1);
m2=(data(2)+m1)/2;
q1=0;
q2=q1+(((2-1)/2)*((data(2)-m1)^2));
q3=q2+(((3-1)/3)*((data(3)-m2)^2));
variance=q3/(3-1)
variance =
1
``````

what the heck, I'm feeling generous, the complete code for a generic size data:

``````sizle = size(data,2);
M = zeros(1, sizle);
Q = M;
Variance = Q;
M(1)=data(1);
for i = 2:sizle
M(i)=((i-1)*M(i-1) + data(i))/i;
Q(i)=Q(i-1)+(i-1)*((data(i)-M(i-1))^2)/i;
Variance(i) = Q(i)/(i-1);
end

Variance(end)
var(data)
``````
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