pub struct RandomVector<T> {
pub variables: Vec<RandomVariable>,
pub probability_matrix: JointProbability<T>,
}Expand description
A multivariate structure tracking pairs or collections of intersecting random processes over a discrete matrix space.
Fields§
§variables: Vec<RandomVariable>§probability_matrix: JointProbability<T>Implementations§
Source§impl RandomVector<f64>
impl RandomVector<f64>
Sourcepub fn new(x: Vec<RandomVariable>, px: JointProbability<f64>) -> CDHResult<Self>
pub fn new(x: Vec<RandomVariable>, px: JointProbability<f64>) -> CDHResult<Self>
Instantiates a new multivariate distribution vector matrix frame context.
§Errors
Returns an Err if the initial input array length drops below 2 or tracking configurations mismatch inside the vectors.
Sourcepub fn get_jointprobability(&self) -> CDHResult<JointProbability<f64>>
pub fn get_jointprobability(&self) -> CDHResult<JointProbability<f64>>
Evaluates the joint operational probability layout grid configurations.
Sourcepub fn marginal_x2(&self, index: usize) -> CDHResult<f64>
pub fn marginal_x2(&self, index: usize) -> CDHResult<f64>
Extracts the marginal probability distribution value matching a specific index coordinate for $X_2$.
Sourcepub fn marginal_x1(&self, index: usize) -> CDHResult<f64>
pub fn marginal_x1(&self, index: usize) -> CDHResult<f64>
Extracts the marginal probability distribution value matching a specific index coordinate for $X_1$.
Sourcepub fn conditional_x1(&self, index_x1: usize, index_x2: usize) -> CDHResult<f64>
pub fn conditional_x1(&self, index_x1: usize, index_x2: usize) -> CDHResult<f64>
Computes the conditional probability allocation metric context $P(X_1 \mid X_2)$.
Sourcepub fn conditional_x2(&self, index_x1: usize, index_x2: usize) -> CDHResult<f64>
pub fn conditional_x2(&self, index_x1: usize, index_x2: usize) -> CDHResult<f64>
Computes the conditional probability allocation metric context $P(X_2 \mid X_1)$.
Sourcepub fn conditional_expectation_x1<H>(
&self,
index_x2: usize,
h: H,
) -> CDHResult<f64>
pub fn conditional_expectation_x1<H>( &self, index_x2: usize, h: H, ) -> CDHResult<f64>
Calculates the conditional expectation variable limit $E[h(X_1) \mid X_2 = x_2]$.
Sourcepub fn conditional_expectation_x2<H>(
&self,
index_x1: usize,
h: H,
) -> CDHResult<f64>
pub fn conditional_expectation_x2<H>( &self, index_x1: usize, h: H, ) -> CDHResult<f64>
Calculates the conditional expectation variable limit $E[h(X_2) \mid X_1 = x_1]$.
Sourcepub fn joint_expectation<F>(&self, g: F) -> CDHResult<f64>
pub fn joint_expectation<F>(&self, g: F) -> CDHResult<f64>
Evaluates joint expectation transformations $E[g(X, Y)]$ over the combined sample domains.
Sourcepub fn covariance(&self) -> CDHResult<f64>
pub fn covariance(&self) -> CDHResult<f64>
- THE COVARIANCE CALCULATOR Uses your exact definitional formula: E[(X1 - E(X1))(X2 - E(X2))] Computes the true covariance spatial scaling link metric between two random processes.
$$\text{Cov}(X,Y) = E[(X - E[X])(Y - E[Y])]$$
Sourcepub fn correlation(&self) -> CDHResult<f64>
pub fn correlation(&self) -> CDHResult<f64>
Evaluates Pearson’s joint population correlation coefficient ($\rho$) containing zero-variance protections.