# numpy.digitize returns values out of range?

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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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 http://docs.scipy.org/doc/numpy/reference/generated/numpy.digitize.html)

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

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

np.digitize(x,bins,right=True)

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

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