xi |
a random variable |
x |
a sample of m variables: x = [x1, x2, · · ·, xm]⊤
|
X |
the data matrix of n samples, X ∈ ℝn×m
|
xi,: |
the i-th row of X, representing a sample |
x:,i
|
the i-th column of X, representing the realization of the random variable xi on n samples |
Θ |
the parameters of a Gaussian Bayesian Network θ = [θ1, · · ·, θm], Θ ∈ ℝm×m
|
Pai
|
a vector containing the parents of xi
|
PAi
|
a matrix whose j-th column represents a realization of Pai on the j-th sample. |
G |
an m× m matrix for BN: if there is a directed edge from xi to xj, Gij = 1, otherwise Gij = 0 |
P |
an m× m matrix for BN: if there is a directed path from xi to xj, Pij = 1, otherwise Pij = 0 |