Multiplicative Factorization of Noisy-Max
Takikawa, Masami, D'Ambrosio, Bruce
–arXiv.org Artificial Intelligence
The noisy-or and its generalization noisy-max have been utilized to reduce the complexity of knowledge acquisition. In this paper, we present a new representation of noisy-max that allows for efficient inference in general Bayesian networks. Empirical studies show that our method is capable of computing queries in well-known large medical networks, QMR-DT and CPCS, for which no previous exact inference method has been shown to perform well.
arXiv.org Artificial Intelligence
Jan-23-2013
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