The subject invention leverages standard probabilistic inference
techniques to determine a log-likelihood for a conditional Gaussian
graphical model of a data set with at least one continuous variable and
with data not observed for at least one of the variables. This provides
an efficient means to compute gradients for CG models with continuous
variables and incomplete data observations. The subject invention allows
gradient-based optimization processes to employ gradients to iteratively
adapt parameters of models in order to improve incomplete data
log-likelihoods and identify maximum likelihood estimates (MLE) and/or
local maxima of the incomplete data log-likelihoods. Conditional Gaussian
local gradients along with conditional multinomial local gradients
determined by the subject invention can be utilized to facilitate in
providing parameter gradients for full conditional Gaussian models.