View source: R/jbss_achieved.R
jbss_achieved | R Documentation |
The function calculates if the joint blind source separation (JBSS) is achieved.
jbss_achieved(W, A)
W |
Array of unmixing matrices with dimension |
A |
Array of true mixing matrices with dimension |
The function calculates if the joint blind source separation is achieved. JBSS is considered achieved when the the location of maximum absolute values of each row of gain matrix
G[,,d] = W[,,d] %*% A[,,d]
is unique within the dataset, but shared between the datasets 1, ...,D
. The first indicates that the sources are separated within dataset and the second indicates that the estimated sources are aligned in same order for each dataset.
Logical. If TRUE
the JBSS is considered achieved.
Mika Sipilä
Anderson, M. (2013). Independent vector analysis: Theory, algorithms, and applications. PhD dissertation, University of Maryland, Baltimore County.
joint_ISI
, avg_ISI
# Mixing matrices and unmixing matrices generated # from standard normal distribution P <- 4; D <- 4; W <- array(rnorm(P * P * D), c(P, P, D)) A <- array(rnorm(P * P * D), c(P, P, D)) jbss_achieved(W, A) if (require("LaplacesDemon")) { # Generate sources from multivariate Laplace distribution P <- 4; N <- 1000; D <- 4; S <- array(NA, c(P, N, D)) for (i in 1:P) { U <- array(rnorm(D * D), c(D, D)) Sigma <- crossprod(U) S[i, , ] <- rmvl(N, rep(0, D), Sigma) } # Generate mixing matrices from standard normal distribution A <- array(rnorm(P * P * D), c(P, P, D)) # Generate mixtures X <- array(NaN, c(P, N, D)) for (d in 1:D) { X[, , d] <- A[, , d] %*% S[, , d] } # Estimate sources and unmixing matrices res_G <- NewtonIVA(X, source_density = "gaussian") jbss_achieved(coef(res_G), A) }
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