Struct rand::distributions::Bernoulli
source · [−]pub struct Bernoulli { /* private fields */ }
Expand description
The Bernoulli distribution.
This is a special case of the Binomial distribution where n = 1
.
Example
use rand::distributions::{Bernoulli, Distribution};
let d = Bernoulli::new(0.3).unwrap();
let v = d.sample(&mut rand::thread_rng());
println!("{} is from a Bernoulli distribution", v);
Precision
This Bernoulli
distribution uses 64 bits from the RNG (a u64
),
so only probabilities that are multiples of 2-64 can be
represented.
Implementations
sourceimpl Bernoulli
impl Bernoulli
sourcepub fn new(p: f64) -> Result<Bernoulli, BernoulliError>
pub fn new(p: f64) -> Result<Bernoulli, BernoulliError>
Construct a new Bernoulli
with the given probability of success p
.
Precision
For p = 1.0
, the resulting distribution will always generate true.
For p = 0.0
, the resulting distribution will always generate false.
This method is accurate for any input p
in the range [0, 1]
which is
a multiple of 2-64. (Note that not all multiples of
2-64 in [0, 1]
can be represented as a f64
.)
sourcepub fn from_ratio(
numerator: u32,
denominator: u32
) -> Result<Bernoulli, BernoulliError>
pub fn from_ratio(
numerator: u32,
denominator: u32
) -> Result<Bernoulli, BernoulliError>
Construct a new Bernoulli
with the probability of success of
numerator
-in-denominator
. I.e. new_ratio(2, 3)
will return
a Bernoulli
with a 2-in-3 chance, or about 67%, of returning true
.
return true
. If numerator == 0
it will always return false
.
For numerator > denominator
and denominator == 0
, this returns an
error. Otherwise, for numerator == denominator
, samples are always
true; for numerator == 0
samples are always false.
Trait Implementations
sourceimpl Distribution<bool> for Bernoulli
impl Distribution<bool> for Bernoulli
sourcefn sample<R: Rng + ?Sized>(&self, rng: &mut R) -> bool
fn sample<R: Rng + ?Sized>(&self, rng: &mut R) -> bool
T
, using rng
as the source of randomness.sourcefn sample_iter<R>(self, rng: R) -> DistIter<Self, R, T>ⓘNotable traits for DistIter<D, R, T>impl<D, R, T> Iterator for DistIter<D, R, T>where
D: Distribution<T>,
R: Rng, type Item = T;
where
R: Rng,
Self: Sized,
fn sample_iter<R>(self, rng: R) -> DistIter<Self, R, T>ⓘNotable traits for DistIter<D, R, T>impl<D, R, T> Iterator for DistIter<D, R, T>where
D: Distribution<T>,
R: Rng, type Item = T;
where
R: Rng,
Self: Sized,
D: Distribution<T>,
R: Rng, type Item = T;
T
, using rng
as
the source of randomness. Read more