27

I don't understand why I keep getting the same 1st digit when I've already seeded a default_random_engine with time(0)(C++ Primer tell me to usetime(0)). Is it a problem of my computer? (Ubuntu, C++11)

I tried on a online compiler and it's interesting that I got the same 1st digit using gcc while not using clang++.

https://wandbox.org/permlink/kiUg1BW1RkDL8y8c

Code:

#include <iostream>
#include <ctime>
#include <random>
using namespace std;
int main(){
    auto t = time(0);
    cout << "time: " << t << endl;
    default_random_engine e(t);
    uniform_int_distribution<int> uniform_dist(0, 9);
    cout << "sequence:";
    for(int i = 0; i < 10; i++){
        cout << uniform_dist(e);
    }
    cout << endl;
    return 0;
}

Result:

As you can see I keep getting 6 as the first digit of a random number, no matter I use clang++ or g++ to compile. enter image description here

  • 5
    That's one of the problems with random number generators, especially with such a limited set of numbers to choose from. You could probably improve it by using a better engine (like mt19937). I also suggest you see the example in this uniform_int_distribution reference. – Some programmer dude Nov 2 '18 at 12:14
  • 3
    Using time(0) the seed values aren't that different, unlike using std::random_device. If you still wanted to use time(0) you could call e.discard(n); where n is the number of steps you want to advance the generator's state. If effect, throwing away the initial n values. – Blastfurnace Nov 2 '18 at 12:30
  • 2
    If std::default_random_engine is implemented as rand, then time(0) is not going to produce vastly different seeds which will lead to a random sequence that is close the the last one. Stay away from std::default_random_engine as you don't know what it is. Unless you really need performance I would default to using a std::mt19937 as your go to PRNG – NathanOliver Nov 2 '18 at 12:33
  • 2
    Not the same but close. 1541162550 is not much different from 1541162552 which can really matter with a bad PRNG – NathanOliver Nov 2 '18 at 12:42
  • 2
    It really depends on the generator. It's conceivable that the most-significant bits of the seed have a greater effect on the generator's initial state. My advice, use a better seed like std::random_device and maybe use discard() to "warm up" the generator before use. – Blastfurnace Nov 2 '18 at 12:49
29

You are setting initial states into your random-generator that are very similar. Depending on the quality of the generator, this may or may not result in similar outputs. To illustrate, I've augmented your sample to (a) print only the first sequence, since that is what we care about, and (b) print several results of various resolution:

int main(){
    auto t = time(0);
    cout << "time: " << t << endl;
    default_random_engine e(t);
    default_random_engine e2(t);
    default_random_engine e3(t);
    default_random_engine e4(t);
    uniform_int_distribution<int> uniform_dist(0, 9);
    uniform_int_distribution<int> uniform_dist2(0,999);
    uniform_int_distribution<int> uniform_dist3(0,99999);
    uniform_int_distribution<int> uniform_dist4(0,9999999);
    cout << "sequence: ";
    cout << uniform_dist(e) << " " << uniform_dist2(e2) << " " << uniform_dist3(e3) << " " << uniform_dist4(e4);
    cout << endl;
    return 0;
}

When run:

$ ./a.out
time: 1541162210
sequence: 7 704 70457 7070079
$ ./a.out
time: 1541162211
sequence: 7 704 70457 7070157
$ ./a.out
time: 1541162212
sequence: 7 704 70458 7070236
$ ./a.out
time: 1541162213
sequence: 7 704 70459 7070315
$ ./a.out
time: 1541162214
sequence: 7 704 70460 7070393
$ ./a.out
time: 1541162215
sequence: 7 704 70461 7070472
$ ./a.out
time: 1541162216
sequence: 7 704 70461 7070550
$ ./a.out
time: 1541162217
sequence: 7 704 70462 7070629
$ ./a.out
time: 1541162218
sequence: 7 704 70463 7070707
$ ./a.out
time: 1541162219
sequence: 7 704 70464 7070786

While I do not know exactly what this random-generator implementation is doing, you can easily see that it is performing a very simple transformation of your seed into state, and state into output values. As other comments have suggested, there are better random generators and better seeds. Also note that the quality varies between implementations; Visual Studio 2017 does not exhibit this behavior.

  • 2
    Dude, this experiment is so smart and straightforward. Very comprehensive, thanks. – Rick Nov 2 '18 at 12:57
  • 1
    As a slight improvement, time(0) could be fed into std::mt19937 (EDIT: I now see that pretty much everyone else has already recommended this). – jwimberley Nov 2 '18 at 13:06
  • In g++ and clang++ on x86_64, std::default_random_engine is a typedef for std::linear_congruential_engine<long unsigned int, 16807, 0, 2147483647>. – Ruslan Nov 2 '18 at 14:18
1

As suggested in comments, std::random_device will provide a superior source of seed material compared to time().

However, if there is a need to use a small seed with a linear congruential generator, the seed value can be expanded to make a better initializer. Linear generators are slow in redistributing the bits in the seed value, so a small difference will cause the initial few values to be close to each other.

The standard library provides std::seed_seq which will expand a small seed to a better initializer value:

seed_seq seed({t});
default_random_engine e(seed);

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