| Literature DB >> 21346932 |
Vibha Anand1, Stephen M Downs.
Abstract
In 2004, an extension of the Noisy-OR formalism termed the Recursive Noisy-OR (RNOR) rule was published for estimating complex probabilistic interactions in a Bayesian Network (BN). The RNOR rule presents an algorithm to construct a complete conditional probability distribution (CPD) of a node while allowing domain causal relationships over and above causal independence to be tractably captured in a semantically meaningful way. However, to the best of our knowledge, the accuracy of this rule has not been tested empirically. In this paper, we report the results of a study that compares the performance of a data-trained expert BN (empiric BN) with the reformulated BN, using the RNOR rule. The original empiric BN was trained with a large dataset from the Regenstrief Medical Record System (RMRS). Furthermore, we evaluate conditions in our dataset which render the RNOR rule inapplicable and discuss our use of Noisy-OR calculations in such situations. We call this approach "Adaptive Recursive Noisy-OR".Entities:
Keywords: Adaptive Recursive Noisy OR; Asthma; Bayesian Network; Noisy-OR; Recursive Noisy OR rule (RNOR)
Mesh:
Year: 2010 PMID: 21346932 PMCID: PMC3041284
Source DB: PubMed Journal: AMIA Annu Symp Proc ISSN: 1559-4076