Q_iid | R Documentation |
Computes the Q function (expected log-likelihood) for the EM algorithm of Cao et al. (2000) for their locally IID model.
Q_iid(logtheta, c, M, rdiag, epsilon)
logtheta |
numeric vector (length k+1) of log(lambda) (1:k) and log(phi) (last entry) |
c |
power parameter in model of Cao et al. (2000) |
M |
matrix (n x k) of conditional expectations for OD flows, one time per row |
rdiag |
numeric vector (length k) containing diagonal of conditional covariance matrix R |
epsilon |
numeric nugget to add to diagonal of covariance for numerical stability |
numeric value of Q function; not vectorized in any way
J. Cao, D. Davis, S. Van Der Viel, and B. Yu. Time-varying network tomography: router link data. Journal of the American Statistical Association, 95:1063-75, 2000.
Other CaoEtAl:
Q_smoothed()
,
R_estep()
,
grad_iid()
,
grad_smoothed()
,
locally_iid_EM()
,
m_estep()
,
phi_init()
,
smoothed_EM()
Add the following code to your website.
For more information on customizing the embed code, read Embedding Snippets.