pub struct SkewNormal<F>{ /* private fields */ }Expand description
The skew normal distribution SN(ξ, ω, α).
The skew normal distribution is a generalization of the
Normal distribution to allow for non-zero skewness.
It has location parameter ξ (xi), scale parameter ω (omega),
and shape parameter α (alpha).
The ξ and ω parameters correspond to the mean μ and standard
deviation σ of the normal distribution, respectively.
The α parameter controls the skewness.
§Density function
It has the density function, for scale > 0,
f(x) = 2 / scale * phi((x - location) / scale) * Phi(alpha * (x - location) / scale)
where phi and Phi are the density and distribution of a standard normal variable.
§Plot
The following plot shows the skew normal distribution with location = 0, scale = 1
(corresponding to the standard normal distribution), and
various values of shape.
§Example
use rand_distr::{SkewNormal, Distribution};
// location 2, scale 3, shape 1
let skew_normal = SkewNormal::new(2.0, 3.0, 1.0).unwrap();
let v = skew_normal.sample(&mut rand::rng());
println!("{} is from a SN(2, 3, 1) distribution", v)§Implementation details
We are using the algorithm from A Method to Simulate the Skew Normal Distribution.
Implementations§
Source§impl<F> SkewNormal<F>
impl<F> SkewNormal<F>
Sourcepub fn new(location: F, scale: F, shape: F) -> Result<SkewNormal<F>, Error>
pub fn new(location: F, scale: F, shape: F) -> Result<SkewNormal<F>, Error>
Construct, from location, scale and shape.
Parameters:
- location (unrestricted)
- scale (must be finite and larger than zero)
- shape (must be finite)
Trait Implementations§
Source§impl<F> Clone for SkewNormal<F>
impl<F> Clone for SkewNormal<F>
Source§fn clone(&self) -> SkewNormal<F>
fn clone(&self) -> SkewNormal<F>
1.0.0 · Source§fn clone_from(&mut self, source: &Self)
fn clone_from(&mut self, source: &Self)
source. Read more