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Functions like numpy.random.uniform() return floating point values between a two bounds, including the first bound but excluding the top one. That is, numpy.random.uniform(0,1) may yield 0 but will never result in 1.

I'm taking such numbers and processing them with a function that sometimes returns results outside of the range. I can use numpy.clip() to chop values outside of the range back to 0-1, but unfortunately that limit is inclusive of the top number.

How do I specify "the number infinitesimally smaller than 1" in python?

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If math is to be believed, you can't. –  Ignacio Vazquez-Abrams Feb 23 '12 at 2:14
2  
in most systems there is a concept of epsilon, which is the smallest increment –  Keith Nicholas Feb 23 '12 at 2:15
    
Uh-oh, I can sense a 0.99999... < 1 flame war brewing –  wim Feb 23 '12 at 3:33
1  
I don't think I'm in paradox (or flame-war) land with this. Or are you saying that numpy.random.uniform(0,1) will actually sometimes return a number equal to 1? If that's the case, then, okay, fine. I don't really care about the paradox, but I want my modified-then-clipped numbers to be guaranteed to be in the same range that the originals are. –  mattdm Feb 23 '12 at 3:41
3  
I think wim is referring to the idea that the real number 0.9999... (repeating) is actually exactly 1 in mathematics. Floating point numbers are not real numbers, so it's not especially relevant to your question. However, I will take this opportunity to note the cases when uniform(x,y) might (extremely rarely!) give you results equal to y. It shouldn't happen with uniform(0,1), but in other cases, the floating point arithmetic used to rescale the underlying [0,1) random number to your bounds might sometimes give y exactly. –  Robert Kern Feb 23 '12 at 12:19

4 Answers 4

up vote 5 down vote accepted

Well, if you're using numpy, you can simply use numpy.nextafter:

>>> import numpy
>>> numpy.nextafter(1, 0)
0.99999999999999989

Note that (at least for me):

>>> import sys
>>> 1-sys.float_info.epsilon
0.9999999999999998
>>> numpy.nextafter(1, 0) - (1-sys.float_info.epsilon)
1.1102230246251565e-16
>>> numpy.nextafter(1, 0) > (1-sys.float_info.epsilon)
True

Incidentally, to second @Robert Kern's point that sometimes random.uniform will include the upper bound for some inputs other than (0, 1):

>>> import random, numpy
>>> numpy.nextafter(0,1)
4.9406564584124654e-324
>>> random.uniform(0, numpy.nextafter(0,1))
0.0
>>> random.uniform(0, numpy.nextafter(0,1))
0.0
>>> random.uniform(0, numpy.nextafter(0,1))
4.9406564584124654e-324

[I share the general sense that there is probably a better way to approach this problem.]

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cool, never knew about that one ! –  wim Feb 23 '12 at 4:30
    
why isn't it the case that numpy.nextafter(1, 0) == (1-sys.float_info.epsilon), is it because the density of floats changes depending on magnitude? –  wim Feb 23 '12 at 4:46
    
@wim: yep. 1+epsilon/2 = 1, but 1-eps/2 = nextafter(1,0). –  DSM Feb 23 '12 at 4:52

Python's sys provides an float_info struct with an epsilon attribute and is defined as

difference between 1 and the least value greater than 1 that is representable as a float

So I would suppose something like

def clip(num):
    if(num >= 1):
        return 1 - sys.float_info.epsilon
    return num

should do the trick. Although this is generally bad, and there are probably tons of reasons why you should never attempt this.

EDIT I just observed one such reason - implementation. While CPython does what you'd expect, my first go-to choice is IronPython, which doesn't (although it's a bug). Ye be warned!

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So... is there a not-generally-bad approach? –  mattdm Feb 23 '12 at 3:36
1  
It really depends on why you need your function to be in [0, 1). Do you want to ignore values >= 1? Do you want to include those values as 1 - eps? Who's taking those values, and why does that guy need them to be [0, 1)? You state that there exists a library function u that returns [0, 1). Then you f(u()) these numbers and return [0, inf), but want to return [0, 1) ...why? Presumably there's an h(f(u)), and maybe we should focus on the h. :) –  Gleno Feb 23 '12 at 5:21

In most practical cases you don't need to be infinitesimally smaller, you can approximate it. So for your example I'd use 0.9999999 instead of 1.0.

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I don't quite understand your use case. Is the problem that you don't want uniform random number generator to ever return the endpoints in the first place? Then you can just wrap it in your own generator:

def my_uniform(low=0, high=1):
  import numpy as np
  while True:
    x = np.random.uniform(low, high)
    if x > low and x < high:
      yield x

Otherwise, what are you doing with the output where 1 is invalid but np.nextafter(1, 0) is valid?

If your processing is returning values outside of the valid range, and it is deterministic, perhaps you should filter the input rather than clip the output.

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