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AI
2009
Springer

Enumerating Unlabeled and Root Labeled Trees for Causal Model Acquisition

13 years 9 months ago
Enumerating Unlabeled and Root Labeled Trees for Causal Model Acquisition
To specify a Bayes net (BN), a conditional probability table (CPT), often of an effect conditioned on its n causes, needs to be assessed for each node. It generally has the complexity exponential on n. The non-impeding noisy-AND (NIN-AND) tree is a recently developed causal model that reduces the complexity to linear, while modeling both reinforcing and undermining interactions among causes. Acquisition of an NIN-AND tree model involves elicitation of a linear number of probability parameters and a tree structure. Instead of asking the human expert to describe the structure from scratch, in this work, we develop a two-step menu selection technique that aids structure acquisition.
Yang Xiang, Zoe Jingyu Zhu, Yu Li
Added 23 Jul 2010
Updated 23 Jul 2010
Type Conference
Year 2009
Where AI
Authors Yang Xiang, Zoe Jingyu Zhu, Yu Li
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