I compute this simple sum on Matlab:
2*0.04-0.5*0.4^2 = -1.387778780781446e-017
but the result is not zero. What can I do?
Aabaz and Jim Clay have good explanations of what's going on.
It's often the case that, rather than exactly calculating the value of 2*0.04 - 0.5*0.4^2, what you really want is to check whether 2*0.04 and 0.5*0.4^2 differ by an amount that is small enough to be within the relevant numerical precision. If that's the case, than rather than checking whether 2*0.04 - 0.5*0.4^2 == 0, you can check whether abs(2*0.04 - 0.5*0.4^2) < thresh. Here thresh can either be some arbitrary smallish number, or an expression involving eps, which gives the precision of the numerical type you're working with.
EDIT:
Thanks to Jim and Tal for suggested improvement. Altered to compare the absolute value of the difference to a threshold, rather than the difference.
Matlab uses double-precision floating-point numbers to store real numbers. These are numbers of the form m*2^e where m is an integer between 2^52 and 2^53 (the mantissa) and e is the exponent. Let's call a number a floating-point number if it is of this form.
All numbers used in calculations must be floating-point numbers. Often, this can be done exactly, as with 2 and 0.5 in your expression. But for other numbers, most notably most numbers with digits after the decimal point, this is not possible, and an approximation has to be used. What happens in this case is that the number is rounded to the nearest floating-point number.
So, whenever you write something like 0.04 in Matlab, you're really saying "Get me the floating-point number that is closest to 0.04. In your expression, there are 2 numbers that need to be approximated: 0.04 and 0.4.
In addition, the exact result of operations like addition and multiplication on floating-point numbers may not be a floating-point number. Although it is always of the form m*2^e the mantissa may be too large. So you get an additional error from rounding the results of operations.
At the end of the day, a simple expression like yours will be off by about 2^-52 times the size of the operands, or about 10^-17.
In summary: the reason your expression does not evaluate to zero is two-fold:
Some of the numbers you start out with are different (approximations) to the exact numbers you provided.
The intermediate results may also be approximations of the exact results.
What you are seeing is quantization error. Matlab uses doubles to represent numbers, and while they are capable of a lot of precision, they still cannot represent all real numbers because there are an infinite number of real numbers. I'm not sure about Aabaz's trick, but in general I would say there isn't anything you can do, other than perhaps massaging your inputs to be double-friendly numbers.
I do not know if it is applicable to your problem but often the simplest solution is to scale your data.
For example:
a=0.04;
b=0.2;
a-0.2*b
ans=-6.9389e-018
c=a/min(abs([a b]));
d=b/min(abs([a b]));
c-0.2*d
ans=0
EDIT: of course I did not mean to give a universal solution to these kind of problems but it is still a good practice that can make you avoid a few problems in numerical computation (curve fitting, etc ...). See Jim Clay's answer for the reason why you are experiencing these problems.
I'm pretty sure this is a case of ye olde floating point accuracy issues.
Do you need 1e-17 accuracy? Is this merely a case of wanting 'pretty' output?
In that case, you can just use a formatted sprintf to display the number of significant digits you want.
Realize that this is not a matlab problem, but a fundamental limitation of how numbers are represented in binary.
For fun, work out what .1 is in binary...
Some references:
http://en.wikipedia.org/wiki/Floating_point#Accuracy_problems
http://www.mathworks.com/support/tech-notes/1100/1108.html
Related
I have a program which calculates probability values
(p-values),
but it is entering a very large negative number into the
exp function
exp(-626294.830) which evaluates to zero instead of the very small
positive number that it should be.
How can I get this to evaluate as a very small floating point number?
I have tried
Math::BigFloat,
bignum, and
bigrat
but all have failed.
Wolfram Alpha says that exp(-626294.830) is 4.08589×10^-271997... zero is a pretty close approximation to that ;-) Although you've edited and removed the context from your question, do you really need to work with such tiny numbers, or perhaps there is some way you could optimize your algorithm or scale your numbers?
Anyway, you are correct that code like Math::BigFloat->new("-626294.830")->bexp seems to take quite some time, even with the support of use Math::BigFloat lib => 'GMP';.
The only alternative I can offer at the moment is Math::Prime::Util::GMP's expreal, although you need to specify a precision to it.
use Math::Prime::Util::GMP qw/expreal/;
use Math::BigFloat;
my $e = Math::BigFloat->new(expreal(-626294.830,272000));
print $e->bnstr,"\n";
__END__
4.086e-271997
But on my machine, even that still takes ~20s to run, which brings us back to the question of potential optimization in other places.
Floating point numbers do not have infinite precision. Assuming the number is represented as an IEEE 754 double, we have 52 bits for a fraction, 11 bits for the exponent, and one bit for the sign. Due to the way exponents are encoded, the smallest positive number that can be represented is 2^-1022.
If we look at your number e^-626294.830, we can do a change of base and see that it equals 2^(log_2 e · -626294.830) = 2^-903552.445, which is significantly smaller than 2^-1022. Approximating your number as zero is therefore correct.
Instead of calculating this value using arbitrary-precision numerics, you are likely better off solving the necessary equations by hand, then coding this in a way that does not require extreme precision. For example, it is unlikely that you need the exact value of e^-626294.830, but perhaps just the magnitude. Then, you can calculate the logarithm instead of using exp().
Consider two number like 1 and 0.99 and i want to sub these number in C#
float s = 0.99f - 1f;
Console.WriteLine(s.toString());
result is : -0.0099999
what can i do that result equal to -0.01 ?
Try this;
decimal d = 0.99m - 1m;
Console.WriteLine(Math.Round(d, 2));
Computers aren't able to perfectly represent fractional numbers. They can only approximate them which is why you're seeing -0.0099999 instead of the expected -0.01.
For anything that you require close approximations you'd typically use an arbitrary precision type and round where appropriate. The most common rounding for currency is bankers rounding as it doesn't skew results heavily in either direction.
See also:
What is the best data type to use for money in c#?
http://wiki.c2.com/?BankersRounding
Floating point numbers are often an approximation. There is a whole field of study about how to use floating numbers in a responsible way in computers and believe me, it is not trivial!
What most programmers do is live with it and make sure their code is 'robust' against the small deviations you get from using floating point numbers.
Wrong:
if (my_float== -0.01)
Right:
if (my_float>= -0.00999 && my_float<=-0.01001)
(The numbers are just as example).
If you need exact numbers you can e.g. use integers. You can use rounding but that is not done halfway calculations as you are likely to make the result more unreliable. Rounding is normally when you print the end result. After all as a good engineer you should know how many digits are relevant at the end.
I'm trying to write a basic digit counter (an integer is inputted and the number of digits of that integer is outputted) for positive integers. This is my general formula:
dig(x) := Math.floor(Math.log(x,10))
I tried implementing the equivalent of dig(x) in Ruby, and found that when I was computing dig(1000) I was getting 2 instead of 3 because Math.log was returning 2.9999999999999996 which would then be truncated down to 2. What is the proper way to handle this problem? (I'm assuming this problem can occur regardless of the language used to implement this approach, but if that's not the case then please explain that in your answer).
To get an exact count of the number of digits in an integer, you can do the usual thing: (in C/C++, assuming n is non-negative)
int digits = 0;
while (n > 0) {
n = n / 10; // integer division, just drops the ones digit and shifts right
digits = digits + 1;
}
I'm not certain but I suspect running a built-in logarithm function won't be faster than this, and this will give you an exact answer.
I thought about it for a minute and couldn't come up with a way to make the logarithm-based approach work with any guarantees, and almost convinced myself that it is probably a doomed pursuit in the first place because of floating point rounding errors, etc.
From The Art of Computer Programming volume 2, we will eliminate one bit of error before the floor function is applied by adding that one bit back in.
Let x be the result of log and then do x += x / 0x10000000 for a single precision floating point number (C's float). Then pass the value into floor.
This is guaranteed to be the fastest (assuming you have the answer in numerical form) because it uses only a few floating point instructions.
Floating point is always subject to roundoff error; that's one of the hazards you need to be aware of, and actively manage, when working with it. The proper way to handle it, if you must use floats is to figure out what the expected amount of accumulated error is and allow for that in comparisons and printouts -- round off appropriately, compare for whether the difference is within that range rather than comparing for equality, etcetera.
There is no exact binary-floating-point representation of simple things like 1/10th, for example.
(As others have noted, you could rewrite the problem to avoid using the floating-point-based solution entirely, but since you asked specifically about working log() I wanted to address that question; apologies if I'm off target. Some of the other answers provide specific suggestions for how you might round off the result. That would "solve" this particular case, but as your floating operations get more complicated you'll have to continue to allow for roundoff accumulating at each step and either deal with the error at each step or deal with the cumulative error -- the latter being the more complicated but more accurate solution.)
If this is a serious problem for an application, folks sometimes use scaled fixed point instead (running financial computations in terms of pennies rather than dollars, for example). Or they use one of the "big number" packages which computes in decimal rather than in binary; those have their own round-off problems, but they round off more the way humans expect them to.
I have a quick question. So, say I have a really big number up to like 15 digits, and I would take the input and assign it to two variables, one float and one double if I were to compare two numbers, how would you compare them? I think double has the precision up to like 15 digits? and float has 8? So, do I simply compare them while the float only contains 8 digits and pad the rest or do I have the float to print out all 15 digits and then make the comparison? Also, if I were asked to print out the float number, is the standard way of doing it is just printing it up to 8 digits? which is its max precision
thanks
Most languages will do some form of type promotion to let you compare types that are not identical, but reasonably similar. For details, you would have to indicate what language you are referring to.
Of course, the real problem with comparing floating point numbers is that the results might be unexpected due to rounding errors. Most mathematical equivalences don't hold for floating point artihmetic, so two sequences of operations which SHOULD yield the same value might actually yield slightly different values (or even very different values if you aren't careful).
EDIT: as for printing, the "standard way" is based on what you need. If, for some reason, you are doing monetary computations in floating point, chances are that you'll only want to print 2 decimal digits.
Thinking in terms of digits may be a problem here. Floats can have a range from negative infinity to positive infinity. In C# for example the range is ±1.5 × 10^−45 to ±3.4 × 10^38 with a precision of 7 digits.
Also, IEEE 754 defines floats and doubles.
Here is a link that might help http://en.wikipedia.org/wiki/IEEE_floating_point
Your question is the right one. You want to consider your approach, though.
Whether at 32 or 64 bits, the floating-point representation is not meant to compare numbers for equality. For example, the assertion 2.0/7.0 == 60.0/210.0 may or may not be true in the CPU's view. Conceptually, the floating-point is inherently meant to be imprecise.
If you wish to compare numbers for equality, use integers. Consider again the ratios of the last paragraph. The assertion that 2*210 == 7*60 is always true -- noting that those are the integral versions of the same four numbers as before, only related using multiplication rather than division. One suspects that what you are really looking for is something like this.
We can write a simple Rational Number class using two integers representing A/B with B != 0.
If we want to represent an irrational number class (storing and computing), the first thing came to my mind is to use floating point, which means use IEEE 754 standard (binary fraction). This is because irrational number must be approximated.
Is there another way to write irrational number class other than using binary fraction (whether they conserve memory space or not) ?
I studied jsbeuno's solution using Python: Irrational number representation in any programming language?
He's still using the built-in floating point to store.
This is not homework.
Thank you for your time.
With a cardinality argument, there are much more irrational numbers than rational ones. (and the number of IEEE754 floating point numbers is finite, probably less than 2^64).
You can represent numbers with something else than fractions (e.g. logarithmically).
jsbeuno is storing the number as a base and a radix and using those when doing calcs with other irrational numbers; he's only using the float representation for output.
If you want to get fancier, you can define the base and the radix as rational numbers (with two integers) as described above, or make them themselves irrational numbers.
To make something thoroughly useful, though, you'll end up replicating a symbolic math package.
You can always use symbolic math, where items are stored exactly as they are and calculations are deferred until they can be performed with precision above some threshold.
For example, say you performed two operations on a non-irrational number like 2, one to take the square root and then one to square that. With limited precision, you may get something like:
(√2)²
= 1.414213562²
= 1.999999999
However, storing symbolic math would allow you to store the result of √2 as √2 rather than an approximation of it, then realise that (√x)² is equivalent to x, removing the possibility of error.
Now that obviously involves a more complicated encoding that simple IEEE754 but it's not impossible to achieve.