# Scipy Pearson's correlation returning always 1

I am using Python library scipy to calculate Pearson's correlation for two float arrays. Returned value for coefficient is always 1.0, even if arrays are different. For example:

``````[-0.65499887  2.34644428]
[-1.46049758  3.86537321]
``````

I am calling the routine in this way:

``````r_row, p_value = scipy.stats.pearsonr(array1, array2)
``````

The value of r_row is always 1.0. What I am doing wrong?

Thanks

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Pearson's correlation coefficient is a measure of how well your data would be fitted by a linear regression. If you only provide it with two points, then there is a line passing exactly through both points, hence your data perfectly fits a line, hence the correlation coefficient is exactly 1.

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I think that pearson correlation coefficient always returns `1.0` or `-1.0` if each array has just two elements, since you can always draw a perfect straight line through the two points.Try it with arrays of length 3 and it will work:

``````import scipy
from scipy.stats import pearsonr

x = scipy.array([-0.65499887,  2.34644428, 3.0])
y = scipy.array([-1.46049758,  3.86537321, 21.0])

r_row, p_value = pearsonr(x, y)
``````

Result:

``````>>> r_row
0.79617014831975552
>>> p_value
0.41371200873701036
``````
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why it doesn't work for arrays with lenght 2? –  user2291379 Apr 17 '13 at 15:35
It works with arrays with length 2. –  pv. Apr 18 '13 at 15:40