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arxiv: 1303.5704 · v1 · pith:5YHYA5BCnew · submitted 2013-03-20 · 💻 cs.AI

"Conditional Inter-Causally Independent" Node Distributions, a Property of "Noisy-Or" Models

classification 💻 cs.AI
keywords commondistributionsnoisy-orevidencegeneratedhypothesesinter-causalmodel
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This paper examines the interdependence generated between two parent nodes with a common instantiated child node, such as two hypotheses sharing common evidence. The relation so generated has been termed "intercausal." It is shown by construction that inter-causal independence is possible for binary distributions at one state of evidence. For such "CICI" distributions, the two measures of inter-causal effect, "multiplicative synergy" and "additive synergy" are equal. The well known "noisy-or" model is an example of such a distribution. This introduces novel semantics for the noisy-or, as a model of the degree of conflict among competing hypotheses of a common observation.

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