How do I seed the rand() function in Objective-C? - objective-c

Part of what I'm developing is a random company name generator. It draws from several arrays of name parts. I use the rand() function to draw the random name parts. However, the same "random" numbers are always generated in the same sequence every time I launch the app, so the same names always appear.
So I searched around SO, and in C there is an srand() function to "seed" the random function with something like the current time to make it more random - like srand(time(NULL)). Is there something like that for Objective-C that I can use for iOS development?

Why don't you use arc4random which doesn't require a seed? You use it like this:
int r = arc4random();
Here's an article comparing it to rand(). The arc4random() man page says this about it in comparison to rand():
The arc4random() function uses the key stream generator employed by the arc4 cipher, which uses 8*8 8
bit S-Boxes. The S-Boxes can be in about (21700) states. The arc4random() function returns pseudo-
random numbers in the range of 0 to (232)-1, and therefore has twice the range of rand(3) and
random(3).
If you want a random number within a range, you can use the arc4random_uniform() function. For example, to generate a random number between 0 and 10, you would do this:
int i = arc4random_uniform(11);
Here's some info from the man page:
arc4random_uniform(upper_bound) will return a uniformly distributed random number less than upper_bound. arc4random_uniform() is recommended over constructions like ``arc4random() % upper_bound'' as it avoids "modulo bias" when the upper bound is not a power of two.

The functions rand() and srand() are part of the Standard C Library and like the rest of the C library fully available for you to us in iOS development with Objective-C. Note that these routines have been superseded by random() and srandom(), which have almost identically calling conventions to rand() and srand() but produce much better results with a larger period. There is also an srandomdev() routine which initializes the state of the random number generator using the random number device. These are also part of the Standard C Library and available for use on iOS in Objective-C.

Related

Efficient random permutation of n-set-bits

For the problem of producing a bit-pattern with exactly n set bits, I know of two practical methods, but they both have limitations I'm not happy with.
First, you can enumerate all of the possible word values which have that many bits set in a pre-computed table, and then generate a random index into that table to pick out a possible result. This has the problem that as the output size grows the list of candidate outputs eventually becomes impractically large.
Alternatively, you can pick n non-overlapping bit positions at random (for example, by using a partial Fisher-Yates shuffle) and set those bits only. This approach, however, computes a random state in a much larger space than the number of possible results. For example, it may choose the first and second bits out of three, or it might, separately, choose the second and first bits.
This second approach must consume more bits from the random number source than are strictly required. Since it is choosing n bits in a specific order when their order is unimportant, this means that it is making an arbitrary distinction between n! different ways of producing the same result, and consuming at least floor(log_2(n!)) more bits than are necessary.
Can this be avoided?
There is obviously a third approach of iteratively computing and counting off the legal permutations until a random index is reached, but that's simply a space-for-time trade-off on the first approach, and isn't directly helpful unless there is an efficient way to count off those n permutations.
clarification
The first approach requires picking a single random number between zero and (where w is the output size), as this is the number of possible solutions.
The second approach requires picking n random values between zero and w-1, zero and w-2, etc., and these have a product of , which is times larger than the first approach.
This means that the random number source has been forced to produce bits to distinguish n! different results which are all equivalent. I'd like to know if there's an efficient method to avoid relying on this superfluous randomness. Perhaps by using an algorithm which produces an un-ordered list of bit positions, or by directly computing the nth unique permutation of bits.
Seems like you want a variant of Floyd's algorithm:
Algorithm to select a single, random combination of values?
Should be especially useful in your case, because the containment test is a simple bitmask operation. This will require only k calls to the RNG. In the code below, I assume you have randint(limit) which produces a uniform random from 0 to limit-1, and that you want k bits set in a 32-bit int:
mask = 0;
for (j = 32 - k; j < 32; ++j) {
r = randint(j+1);
b = 1 << r;
if (mask & b) mask |= (1 << j);
else mask |= b;
}
How many bits of entropy you need here depends on how randint() is implemented. If k > 16, set it to 32 - k and negate the result.
Your alternative suggestion of generating a single random number representing one combination among the set (mathematicians would call this a rank of the combination) is simpler if you use colex order rather than lexicographic rank. This code, for example:
for (i = k; i >= 1; --i) {
while ((b = binomial(n, i)) > r) --n;
buf[i-1] = n;
r -= b;
}
will fill the array buf[] with indices from 0 to n-1 for the k-combination at colex rank r. In your case, you'd replace buf[i-1] = n with mask |= (1 << n). The binomial() function is binomial coefficient, which I do with a lookup table (see this). That would make the most efficient use of entropy, but I still think Floyd's algorithm would be a better compromise.
[Expanding my comment:] If you only have a little raw entropy available, then use a PRNG to stretch it further. You only need enough raw entropy to seed a PRNG. Use the PRNG to do the actual shuffle, not the raw entropy. For the next shuffle reseed the PRNG with some more raw entropy. That spreads out the raw entropy and makes less of a demand on your entropy source.
If you know exactly the range of numbers you need out of the PRNG, then you can, carefully, set up your own LCG PRNG to cover the appropriate range while needing the minimum entropy to seed it.
ETA: In C++there is a next_permutation() method. Try using that. See std::next_permutation Implementation Explanation for more.
Is this a theory problem or a practical problem?
You could still do the partial shuffle, but keep track of the order of the ones and forget the zeroes. There are log(k!) bits of unused entropy in their final order for your future consumption.
You could also just use the recurrence (n choose k) = (n-1 choose k-1) + (n-1 choose k) directly. Generate a random number between 0 and (n choose k)-1. Call it r. Iterate over all of the bits from the nth to the first. If we have to set j of the i remaining bits, set the ith if r < (i-1 choose j-1) and clear it, subtracting (i-1 choose j-1), otherwise.
Practically, I wouldn't worry about the couple of words of wasted entropy from the partial shuffle; generating a random 32-bit word with 16 bits set costs somewhere between 64 and 80 bits of entropy, and that's entirely acceptable. The growth rate of the required entropy is asymptotically worse than the theoretical bound, so I'd do something different for really big words.
For really big words, you might generate n independent bits that are 1 with probability k/n. This immediately blows your entropy budget (and then some), but it only uses linearly many bits. The number of set bits is tightly concentrated around k, though. For a further expected linear entropy cost, I can fix it up. This approach has much better memory locality than the partial shuffle approach, so I'd probably prefer it in practice.
I would use solution number 3, generate the i-th permutation.
But do you need to generate the first i-1 ones?
You can do it a bit faster than that with kind of divide and conquer method proposed here: Returning i-th combination of a bit array and maybe you can improve the solution a bit
Background
From the formula you have given - w! / ((w-n)! * n!) it looks like your problem set has to do with the binomial coefficient which deals with calculating the number of unique combinations and not permutations which deals with duplicates in different positions.
You said:
"There is obviously a third approach of iteratively computing and counting off the legal permutations until a random index is reached, but that's simply a space-for-time trade-off on the first approach, and isn't directly helpful unless there is an efficient way to count off those n permutations.
...
This means that the random number source has been forced to produce bits to distinguish n! different results which are all equivalent. I'd like to know if there's an efficient method to avoid relying on this superfluous randomness. Perhaps by using an algorithm which produces an un-ordered list of bit positions, or by directly computing the nth unique permutation of bits."
So, there is a way to efficiently compute the nth unique combination, or rank, from the k-indexes. The k-indexes refers to a unique combination. For example, lets say that the n choose k case of 4 choose 3 is taken. This means that there are a total of 4 numbers that can be selected (0, 1, 2, 3), which is represented by n, and they are taken in groups of 3, which is represented by k. The total number of unique combinations can be calculated as n! / ((k! * (n-k)!). The rank of zero corresponds to the k-index of (2, 1, 0). Rank one is represented by the k-index group of (3, 1, 0), and so forth.
Solution
There is a formula that can be used to very efficiently translate between a k-index group and the corresponding rank without iteration. Likewise, there is a formula for translating between the rank and corresponding k-index group.
I have written a paper on this formula and how it can be seen from Pascal's Triangle. The paper is called Tablizing The Binomial Coeffieicent.
I have written a C# class which is in the public domain that implements the formula described in the paper. It uses very little memory and can be downloaded from the site. It performs the following tasks:
Outputs all the k-indexes in a nice format for any N choose K to a file. The K-indexes can be substituted with more descriptive strings or letters.
Converts the k-index to the proper lexicographic index or rank of an entry in the sorted binomial coefficient table. This technique is much faster than older published techniques that rely on iteration. It does this by using a mathematical property inherent in Pascal's Triangle and is very efficient compared to iterating over the entire set.
Converts the index in a sorted binomial coefficient table to the corresponding k-index. The technique used is also much faster than older iterative solutions.
Uses Mark Dominus method to calculate the binomial coefficient, which is much less likely to overflow and works with larger numbers. This version returns a long value. There is at least one other method that returns an int. Make sure that you use the method that returns a long value.
The class is written in .NET C# and provides a way to manage the objects related to the problem (if any) by using a generic list. The constructor of this class takes a bool value called InitTable that when true will create a generic list to hold the objects to be managed. If this value is false, then it will not create the table. The table does not need to be created in order to use the 4 above methods. Accessor methods are provided to access the table.
There is an associated test class which shows how to use the class and its methods. It has been extensively tested with at least 2 cases and there are no known bugs.
The following tested example code demonstrates how to use the class and will iterate through each unique combination:
public void Test10Choose5()
{
String S;
int Loop;
int N = 10; // Total number of elements in the set.
int K = 5; // Total number of elements in each group.
// Create the bin coeff object required to get all
// the combos for this N choose K combination.
BinCoeff<int> BC = new BinCoeff<int>(N, K, false);
int NumCombos = BinCoeff<int>.GetBinCoeff(N, K);
// The Kindexes array specifies the indexes for a lexigraphic element.
int[] KIndexes = new int[K];
StringBuilder SB = new StringBuilder();
// Loop thru all the combinations for this N choose K case.
for (int Combo = 0; Combo < NumCombos; Combo++)
{
// Get the k-indexes for this combination.
BC.GetKIndexes(Combo, KIndexes);
// Verify that the Kindexes returned can be used to retrive the
// rank or lexigraphic order of the KIndexes in the table.
int Val = BC.GetIndex(true, KIndexes);
if (Val != Combo)
{
S = "Val of " + Val.ToString() + " != Combo Value of " + Combo.ToString();
Console.WriteLine(S);
}
SB.Remove(0, SB.Length);
for (Loop = 0; Loop < K; Loop++)
{
SB.Append(KIndexes[Loop].ToString());
if (Loop < K - 1)
SB.Append(" ");
}
S = "KIndexes = " + SB.ToString();
Console.WriteLine(S);
}
}
So, the way to apply the class to your problem is by considering each bit in the word size as the total number of items. This would be n in the n!/((k! (n - k)!) formula. To obtain k, or the group size, simply count the number of bits set to 1. You would have to create a list or array of the class objects for each possible k, which in this case would be 32. Note that the class does not handle N choose N, N choose 0, or N choose 1 so the code would have to check for those cases and return 1 for both the 32 choose 0 case and 32 choose 32 case. For 32 choose 1, it would need to return 32.
If you need to use values not much larger than 32 choose 16 (the worst case for 32 items - yields 601,080,390 unique combinations), then you can use 32 bit integers, which is how the class is currently implemented. If you need to use 64 bit integers, then you will have to convert the class to use 64 bit longs. The largest value that a long can hold is 18,446,744,073,709,551,616 which is 2 ^ 64. The worst case for n choose k when n is 64 is 64 choose 32. 64 choose 32 is 1,832,624,140,942,590,534 - so a long value will work for all 64 choose k cases. If you need numbers bigger than that, then you will probably want to look into using some sort of big integer class. In C#, the .NET framework has a BigInteger class. If you are working in a different language, it should not be hard to port.
If you are looking for a very good PRNG, one of the fastest, lightweight, and high quality output is the Tiny Mersenne Twister or TinyMT for short . I ported the code over to C++ and C#. it can be found here, along with a link to the original author's C code.
Rather than using a shuffling algorithm like Fisher-Yates, you might consider doing something like the following example instead:
// Get 7 random cards.
ulong Card;
ulong SevenCardHand = 0;
for (int CardLoop = 0; CardLoop < 7; CardLoop++)
{
do
{
// The card has a value of between 0 and 51. So, get a random value and
// left shift it into the proper bit position.
Card = (1UL << RandObj.Next(CardsInDeck));
} while ((SevenCardHand & Card) != 0);
SevenCardHand |= Card;
}
The above code is faster than any shuffling algorithm (at least for obtaining a subset of random cards) since it only works on 7 cards instead of 52. It also packs the cards into individual bits within a single 64 bit word. It makes evaluating poker hands much more efficient as well.
As a side, note, the best binomial coefficient calculator I have found that works with very large numbers (it accurately calculated a case that yielded over 15,000 digits in the result) can be found here.

arc4random initialisation

I am using random number generation as part of a procedure for minimising a function (using the Nelder-Mead simplex algorithm) in objective-c (for iOS). I have used arc4random() because it seems to be recommended everywhere on the grounds that a) it doesn't need to be seeded and b) it gives higher-quality random numbers than alternatives such as rand() and random(). I generate doubles between 0 and 1 using
#define ARC4RANDOM_MAX 0x100000000
-(double) Rnd{
return (double)arc4random() / (double)ARC4RANDOM_MAX ; }
However, to test the procedure I need to generate repeatable sequences of random numbers, and I can't find any reference to a way to initialise arc4random() to do this. Is it the case that arc4random() cannot be initialised to give a repeatable sequence? If so, how can anyone implement an automated unit test when every test will result in a different answer? Do I need to use the "lower quality" random numbers from random()? Thanks for your help.
The arc4random function gets random numbers from a pool over which it has no control. It has no mechanism to provide repeatability. For unit tests, you'll have to use something else.

Multiple random number generators in Objective C

In my current project I need multiple random number generators because I need to be able to repeat their sequences independently from each other.
So far I did not find any way to achieve this with the standard objective-c random number generators, because they only have one global state.
I think having an random number generator class would solve my problem. I could create several instances which I could reset individually.
Is something like this already available? I was not able to find any random number generator implementation in objective c. I would like to avoid implementing it myself because I have no experience with random numbers and I think it is something that's hard to get right.
I have a random class, based on the Mersenne Twister algorithm, which you can get from my dropbox here.
It's rather old, and isn't compiled for ARC, but that doesn't make it any less good :)
Example code:
MTRandom *randWithSeed = [[MTRandom alloc] initWithSeed:12345];
double d = [rand nextDouble];
int i = [rand nextInt];
MTRandom *timeBasedRand = [MTRandom new]; // seeds with current time
double d2 = [timeBasedRand nextDouble];
int i2 = [timeBasedRand nextInt];
EDIT: If you want to be really cool, you can use this:
Source
Have you tried
srandom(seed);
and then calling
random();
? If the seeds are the same then you should get the same sequence of random numbers.

How to make rand() more likely to select certain numbers?

Is it possible to use rand() or any other pseudo-random generator to pick out random numbers, but have it be more likely that it will pick certain numbers that the user feeds it? In other words, is there a way, with rand() or something else, to pick a pseudo random number, but be able to adjust the odds of getting certain outcomes, and how do you do that if it is possible.
BTW, I'm just asking how to change the numbers that rand() outputs, not how to get the user input.
Well, your question is a bit vague... but if you wanted to pick a number from 0-100 but with a bias for (say) 43 and 27, you could pick a number in the range [0, 102] and map 101 to 43 and 102 to 27. It will really depend on how much bias you want to put in, what your range is etc.
You want a mapping function between uniform density of rand() and the probability density that you desire. The mapping function can be done lots of different ways.
You can certainly use any random number generator to skew the results. Example in C#, since I don't know objective-c syntax. I assume that rand() return a number tween 0 and 1, 0 inclusive and 1 exclusive. It should be quite easy to understand the idear and convert the code to any other language.
/// <summary>
/// Dice roll with a double chance of rolling a 6.
/// </summary>
int SkewedDiceRoll()
{
// Set diceRool to a value from 1 to 7.
int diceRool = Math.Floor(7 * rand()) + 1;
// Treat a value of 7 as a 6.
if (diceRoll == 7)
{
diceRoll = 6;
}
return diceRoll;
}
This is not too difficult..
simply create an array of all possible numbers, then pad the array with extra numbers of which you want to result more often.
ie:
array('1',1','1','1','2','3','4','4');
Obviously when you query that array, it will call "1" the most, followed by "4"
In other words, is there a way, with rand() or something else, to pick a pseudo random number, but be able to adjust the odds of getting certain outcomes, and how do you do that if it is possible.
For simplicity sake, let's use the drand48() which returns "values uniformly distributed over the interval [0.0,1.0)".
To make the values close to one more likely to appear, apply skew function log2():
log2( drand48() + 1.0 ); // +1 since log2() in is [0.0, 1.0) for values in [1.0, 2.0)
To make the values close to zero more likely to appear, use the e.g. exp():
(exp(drand48()) - 1.0) * (1/(M_E-1.0)); // exp(0)=1, exp(1)=e
Generally you need to crate a function which would map the uniformly distributed values from the random function into values which are distributed differently, non-uniformly.
You can use the follwing trick
This example has a 50 percent chance of producing one of your 'favourite' numbers
int[] highlyProbable = new int[]{...};
public int biasedRand() {
double rand = rand();
if (rand < 0.5) {
return highlyProbable[(int)(highlyProbable.length * rand())];
} else {
return (int)YOUR_RANGE * rand();
}
}
In addition to what Kevin suggested, you could have your regular group of numbers (the wide range) chopped into a number of smaller ranges, and have the RNG pick from the ranges you find favorable. You could access these ranges in a particular order, or, you can access them in some random order (but I can assume this wouldn't be what you want.) Since you're using manually specified ranges to be accessed within the wide range of elements, you're likely to see the numbers you want pop up more than others. Of course, this is just how I'd approach it, and it may not seem all that rational.
Good luck.
By definition the output of a random number generator is random, which means that each number is equally likely to occur next (1/10 chance) and you should not be able to affect the outcome.
Of-course, a pseudo-random generator creates an output that will always follow the same pattern for a given input seed. So if you know the seed, then you may have some idea of the output sequence. You can, of-course, use the modulus operator to play around with the set of numbers being output from the generator (eg. %5 + 2 to generate numbers from 2 to 7).

Random Numbers in Objective-C Using Mod Range?

I have read here -- without understanding much -- that it's bad to use mod range. So this typical recommendation for Objective-C
int r = arc4random() % 45;
might be a bad idea to get a number from 0 to 45 (something about the distribution and this formula having a preference for low bits). What should one use in Objective-C?
<sarcasm>
I am so glad to be able to finally learn this stuff after using only high-level languages (Java et. al) all this time. Tomorrow I will try to make fire with two twigs. </sarcasm>
Java is just as high level as Objecive C here - in this case Java' Random.getInt() is the same as arc4random in that they both return a 32-bit pseudo-random number.
The issue raised in the URL (and I have seen elsewhere) is that rand()
could be repeating itself every 32768
values.
Whilst OSX's arc4random could have (2**1700) states.
But as in all uses of pseudo-random generators you need to be aware of their weaknesses before using them e.g. a preference for low bits in some generators and also the comment in the OpenBSD arc4random man page where it says
arc4random_uniform() is recommended
over constructions like ``arc4random()
% upper_bound'' as it avoids "modulo
bias" when the upper bound is not a
power of two.