Causal independence for probability assessment and inference usingBayesian networks
Heckerman, D.; Breese, J.S.
Systems, Man and Cybernetics, Part A: Systems and Humans, IEEE Transactions on
Volume 26, Issue 6, Nov 1996 Page(s):826 - 831
Digital Object Identifier 10.1109/3468.541341
Summary:A Bayesian network is a probabilistic representation for uncertain
relationships, which has proven to be useful for modeling real-world
problems. When there are many potential causes of a given effect,
however, both probability assessment and inference using a Bayesian
network can be difficult. In this paper, we describe causal
independence, a collection of conditional independence assertions and
functional relationships that are often appropriate to apply to the
representation of the uncertain interactions between causes and effect.
We show how the use of causal independence in a Bayesian network can
greatly simplify probability assessment as well as probabilistic
inference
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