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- Widely used approach for learning in the presence of unobserved variables.
- Can be used for variables which are never directly observed,
provided the general form of the probability distribution is known
(unlike Gradient ascent).
- EM algorithm used widely in BBN and clustering algorithms, and
Partially Observable Markov Models.
- easiest to describe EM from an example
Patricia Riddle
Fri May 15 13:00:36 NZST 1998