numpy covariance matrix

Suppose I have two vectors of length 25, and I want to compute their covariance matrix. I try doing this with numpy.cov, but always end up with a 2x2 matrix.

``````>>> import numpy as np
>>> x=np.random.normal(size=25)
>>> y=np.random.normal(size=25)
>>> np.cov(x,y)
array([[ 0.77568388,  0.15568432],
[ 0.15568432,  0.73839014]])
``````

Using the rowvar flag doesn't help either - I get exactly the same result.

``````>>> np.cov(x,y,rowvar=0)
array([[ 0.77568388,  0.15568432],
[ 0.15568432,  0.73839014]])
``````

How can I get the 25x25 covariance matrix?

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You have two vectors, not 25. The computer I'm on doesn't have python so I can't test this, but try:

``````z = zip(x,y)
np.cov(z)
``````

Of course.... really what you want is probably more like:

``````n=100 # number of points in each vector
num_vects=25
vals=[]
for _ in range(num_vects):
vals.append(np.random.normal(size=n))
np.cov(vals)
``````

This takes the covariance (I think/hope) of `num_vects` 1x`n` vectors

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No, I only have 2 vectors, each with 25 points. The solution with zip does in fact produce a 25x25 matrix, I still have to figure out if it's what I was hoping to get. Thanks anyway :) –  user13321 Feb 23 at 2:28
If you have two vectors with 25 points, you probably just want a 2x2 covariance matrix. –  David Marx Feb 23 at 3:02

``````>> np.cov.__doc__
``````

or looking at Numpy Covariance, Numpy treats each row of array as a separate variable, so you have two variables and hence you get a 2 x 2 covariance matrix.

I think the previous post has right solution. I have the explanation :-)

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this produces a (50, 50) matrix! –  user13321 Feb 23 at 2:21

As pointed out above, you only have two vectors so you'll only get a 2x2 cov matrix.

IIRC the 2 main diagonal terms will be sum( (x-mean(x))**2) / (n-1) and similarly for y.

The 2 off-diagonal terms will be sum( (x-mean(x))(y-mean(y)) ) / (n-1). n=25 in this case.

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``````import numpy as np