# Correlate one set of vectors to another in numpy?

Let's say I have a set of vectors (readings from sensor 1, readings from sensor 2, readings from sensor 3 -- indexed first by timestamp and then by sensor id) that I'd like to correlate to a separate set of vectors (temperature, humidity, etc -- also all indexed first by timestamp and secondly by type).

What is the cleanest way in numpy to do this? It seems like it should be a rather simple function...

In other words, I'd like to see:

``````> a.shape
(365,20)

> b.shape
(365, 5)

> correlations = magic_correlation_function(a,b)

> correlations.shape
(20, 5)
``````

Cheers, /YGA

Here's what I would like to see:

``````\$ In [27]:  x
\$ Out[27]:
array([[ 0,  0,  0],
[-1,  0, -1],
[-2,  0, -2],
[-3,  0, -3],
[-4,  0.1, -4]])

\$ In [28]: y
\$ Out[28]:
array([[0, 0],
[1, 0],
[2, 0],
[3, 0],
[4, 0.1]])

\$ In [28]: magical_correlation_function(x, y)
\$ Out[28]:
array([[-1.        ,  0.70710678,  1.        ]
[-0.70710678,  1.        ,  0.70710678]])
``````

Ps2: whoops, mis-transcribed my example. Sorry all. Fixed now.

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It's not obvious to me what you're trying to do, could you maybe post example input and output (for some smaller size data)? –  dF. Apr 27 '09 at 23:10
What formula are you using to arrive at those numbers? I can't seem to reproduce them with any normal correlation/covariance formulas (but then I'm no expert in statistics). –  David Z Apr 28 '09 at 0:00

The simplest thing that I could find was using the scipy.stats package

``````In [8]: x
Out[8]:
array([[ 0. ,  0. ,  0. ],
[-1. ,  0. , -1. ],
[-2. ,  0. , -2. ],
[-3. ,  0. , -3. ],
[-4. ,  0.1, -4. ]])
In [9]: y
Out[9]:
array([[0. , 0. ],
[1. , 0. ],
[2. , 0. ],
[3. , 0. ],
[4. , 0.1]])

In [10]: import scipy.stats

In [27]: (scipy.stats.cov(y,x)
/(numpy.sqrt(scipy.stats.var(y,axis=0)[:,numpy.newaxis]))
/(numpy.sqrt(scipy.stats.var(x,axis=0))))
Out[27]:
array([[-1.        ,  0.70710678, -1.        ],
[-0.70710678,  1.        , -0.70710678]])
``````

These aren't the numbers you got, but you've mixed up your rows. (Element [0,0] should be 1.)

A more complicated, but purely numpy solution is

``````In [40]: numpy.corrcoef(x.T,y.T)[numpy.arange(x.shape[1])[numpy.newaxis,:]
,numpy.arange(y.shape[1])[:,numpy.newaxis]]
Out[40]:
array([[-1.        ,  0.70710678, -1.        ],
[-0.70710678,  1.        , -0.70710678]])
``````

This will be slower because it computes the correlation of each element in x with each other element in x, which you don't want. Also, the advanced indexing techniques used to get the subset of the array you desire can make your head hurt.

If you're going to use numpy intensely, get familiar with the rules on broadcasting and indexing. They will help you push as much down to the C-level as possible.

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I've updated the question with the "right" inputs -- prob. makes sense to update the response just so as not to confuse people :-) –  YGA Apr 29 '09 at 2:41
``````correlations = dot(transpose(a), b)