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use crate::{
algebra::abstr::Real,
special::error::Error,
special::gamma::Gamma,
statistics::distrib::{ChiSquare, Continuous},
};
use std::clone::Clone;
#[cfg(feature = "serde")]
use serde::{Deserialize, Serialize};
#[cfg_attr(feature = "serde", derive(Serialize, Deserialize))]
#[derive(Clone, Copy, Debug)]
pub struct G<T> {
df: u32,
g: T,
}
impl<T> G<T>
where
T: Real + Gamma + Error,
{
pub fn test_vector(x: &Vec<T>, y: &Vec<T>) -> G<T> {
if x.len() != y.len() {
panic!();
}
let df: u32 = (x.len() - 1) as u32;
let mut n: T = T::zero();
for y_i in y.iter() {
n += *y_i;
}
let mut b: T = T::zero();
for x_i in x.iter() {
b += *x_i;
}
let k: T = n / b;
let mut g: T = T::zero();
for i in 0..x.len() {
g += x[i] * (x[i] / (y[i] / k)).ln()
}
G {
df,
g: T::from_f64(2.0) * g,
}
}
pub fn df(&self) -> u32 {
self.df
}
pub fn g(&self) -> T {
self.g
}
pub fn p_value(&self) -> T {
let distrib: ChiSquare<T> = ChiSquare::new(self.df);
T::one() - distrib.cdf(self.g)
}
}