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Most effective way for float and double comparison

I am new to C++. I had a doubt, while reading C++. How to decide two floating point numbers equal to each other or not ?

Thanks in advance

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marked as duplicate by dlev, R. Martinho Fernandes, Paul R, Mark B, Bo Persson Jul 29 '11 at 13:40

This question has been asked before and already has an answer. If those answers do not fully address your question, please ask a new question.

    
May help ya out java2s.com/Tutorial/Cpp/0040__Data-Types/… –  sealz Jul 29 '11 at 13:12
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@jholar99: The answer is basically: "You decide how two floating point numbers equal to each other or not." –  R. Martinho Fernandes Jul 29 '11 at 13:15
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If at any time in your programming career you are comparing two floating point for exact equality, 99.9999999999 % of the time you are really, really wrong. –  Stefano Borini Jul 29 '11 at 13:28
    
@Stefano No, definitely not 99.9999999%, perhaps 80% as sometimes exact binary equality is enough or even required. –  Christian Rau Jul 29 '11 at 13:38
    
@Martinho +1 for the only completely correct answer, although pehaps of not much help to a beginner. –  Christian Rau Jul 29 '11 at 13:39

3 Answers 3

up vote 1 down vote accepted

Obviously, you should not use operator == to compare them.

The important concept here is if the difference of your two floating point number is small enough to the precision requirement of your problem to solve or smaller than your error range, we should consider them as equal.

There are some practical methods suggestions such as

  fabs(f1 - f2) < precision-requirement
  fabs(f1 - f2) < max(fabs(f1), fabs(f2)) * percentage-precision-requirement
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Ah, it depends. Sometimes exact binary equality is enough or even required. And many "magic" constants (like 0, 1, integers) are exact, anyway and you don't want nearly equal values to be treated equal. These might be regarded special cases, but they're not that rare. So I wouldn't always call == the wrong solution, but weight it against the situation. Of course this needs some more acquaintance with inexact floating point representations. –  Christian Rau Jul 29 '11 at 13:16
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The problem with the difference (first version) is that it doesn't give you the same measure of "closeness" across all scales. Numbers near zero will need a much finer precision_requirement than numbers near the extreme ends of the range. –  Kerrek SB Jul 29 '11 at 13:21
4  
This is not a correct answer. First of all, the precision requirement might be smaller than epsilon. Second, you have to scale by the max of f1 and f2, not min. –  Don Reba Jul 29 '11 at 13:30

There is a special constant you need to know of, called DBL_EPSILON (or FLT_EPSILON). This is the smallest value that could be added to 1.0 and change its value. The value 1.0 is very important — larger numbers do not change when added to DBL_EPSILON. Now, you can scale this value to the numbers you are comparing to tell whether they are different or not. The correct expression for comparing two doubles is:

if (fabs(a-b) <= DBL_EPSILON * fmax(fabs(a), fabs(b)))
{
    // ...
}
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FLT_EPSILON is not the smallest value that can be added to 1.0f and change its value. blog.frama-c.com/index.php?post/2013/05/09/FLT_EPSILON –  Pascal Cuoq May 13 '13 at 17:59
    
@PascalCuoq, thanks for the pointer. –  Don Reba May 14 '13 at 3:33

If your floating point types use IEEE 754 representation (most likely this is the case), then you should use the fact that the ordering of the binary representation of floats is the same as the ordering by value. That is, if you increment the binary representation of a float by one bit, you get the next larger number.

Using this fact, we can compare floats by counting their binary difference. This is called "comparison by unit-in-last-place (ULP)". There are some subtleties involving signs, zeros, infinities and NaNs, but that's the gist of it. Here is a comprehensive article explaining this.

Basically, we consider two floats equal if they differ in some small number of units in last place. Together with your compiler's documentation of its math functions' accuracies in last place and your own code you can determine which cut-off suits your needs.

In pseudo code:

double x, y;

// this is type punning, should be done differently in reality
uint64_t ux = *reinterpret_cast<const uint64_t*>(&x);
uint64_t uy = *reinterpret_cast<const uint64_t*>(&y);

return abs(ux - uy) < CUT_OFF; // e.g. CUT_OFF = 3;

The above code is just a crude example which won't work, you have to take care of lots of special cases before this final comparison. See the article for details.

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I love this idea, but won't the last line in your example choke if ux<uy and incrementing the mantissa of ux overflows into the exponent? Then abs(ux-uy) will be HUGE. –  spraff Jul 29 '11 at 13:32
    
@Spraff: This is just the rough gist. You'll have to implement it more carefully, indeed (e.g. cast to signed int first, or compare first and then subtract in the right order). –  Kerrek SB Jul 29 '11 at 13:44
    
I suppose you could require that all non-mantissa parts be equal and then mask them out... –  spraff Jul 29 '11 at 13:47
    
Well, any sensible implementation would start with if (sign(a) != sign(b)) return a == b, so we'd probably not have to worry about that later. –  Kerrek SB Jul 29 '11 at 13:49
    
I meant if the exponent is different then there is an order of magnitude difference in the values, which is probably different enough :-P –  spraff Jul 29 '11 at 14:05

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