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I am using the following code to digitize an array into 16 bins:

numpy.digitize(array, bins=numpy.histogram(array, bins=16)[1])

I expect that the output is in the range [1, 16], since there are 16 bins. However, one of the values in the returned array is 17. How can this be explained?

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up vote 4 down vote accepted

This is actually documented behaviour of numpy.digitize():

Each index i returned is such that bins[i-1] <= x < bins[i] if bins is monotonically increasing, or bins[i-1] > x >= bins[i] if bins is monotonically decreasing. If values in x are beyond the bounds of bins, 0 or len(bins) is returned as appropriate.

So in your case, 0 and 17 are also valid return values (note that the bin array returned by numpy.histogram() has length 17). The bins returned by numpy.histogram() cover the range array.min() to array.max(). The condition given in the docs shows that array.min() belongs to the first bin, while array.max() lies outside the last bin -- that's why 0 is not in the output, while 17 is.

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Hmm, I do know about the edge case behavior of digitize(). However, since i am using histogram() to create the bins, aren't all values supposed to lie within the bins? – sandesh247 Dec 4 '10 at 23:18
As I explained in my answer, array.min() is supposed to lie in the first bin because it satisfies the bins[0] <= array.min() < bins[1] condition, but array.max() does not fulfil bins[15] <= array.max() < bins[16], so it's not in the last bin. – Sven Marnach Dec 5 '10 at 0:53
Thanks for your patience. The behavior of the bins argument for numpy.histogram is different (the last interval is a closed interval), which led to the confusion. – sandesh247 Dec 5 '10 at 5:32

numpy.histogram() produces an array of the bin edges, of which there are (number of bins)+1.

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In numpy version 1.8.,you have an option to select whether you want numpy.digitize to consider the interval to be closed or open. Following is an example (copied from

x = np.array([1.2, 10.0, 12.4, 15.5, 20.])

bins = np.array([0,5,10,15,20])


array([1, 2, 3, 4, 4])

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