Conditional expectation \(E[u \vert y]\) and variance \(V[u \vert y]\) of the latent states u given the observed states y
VEuy(theta_curr, M, M_bdiag, y, V, VCNs, nObs)the conditional expectation \(E[u \vert y]\) and variance \(V[u \vert y]\) of the latent states u given the observed states y.
current p-dimensional vector parameter.
A \(n \times K\) dimensional (design) matrix.
A\(n \times Jp\) dimensional block-diagonal design matrix. Each j-th block (\(j = 1,\dots,J\)) is a \(n_j \times p\) dimensional design matrix for the j-th clone.
n-dimensional vector of the time-adjacent cellular increments
A \(p \times K\) dimensional net-effect matrix.
A n-dimensional vector including values of the vector copy number corresponding to the cell counts of y.
A K-dimensional vector including the frequencies of each clone k (\(k = 1,\dots,K\)).