cut() documentation states that: "Out of bounds values will be NA in the resulting Categorical object." This makes it difficult when the upper bound is not necessarily clear or important. For example:
cut (weight, bins=[10,50,100,200])
Will produce the bins:
[(10, 50] < (50, 100] < (100, 200]]
cut (250, bins=[10,50,100,200]) will produce a
NaN, as will
cut (5, bins=[10,50,100,200]). What I'm trying to do is produce something like
> 200 for the first example and
< 10 for the second.
I realize I could do
cut (weight, bins=[float("inf"),10,50,100,200,float("inf")]) or the equivalent, but the report style I am following doesn't allow things like
(200, inf]. I realize too I could actually specify custom labels via the
labels parameter on
cut(), but that means remembering to adjust them every time I adjust
bins, which could be often.
Have I exhausted all the possibilities, or is there something in
cut() or elsewhere in
pandas that would help me do this? I'm thinking about writing a wrapper function for
cut() that would automatically generate the labels in desired format from the bins, but I wanted to check here first.