Error - Bars for Belief Net
نویسندگان
چکیده
منابع مشابه
Quantifying the uncertainty of a belief net response: Bayesian error-bars for belief net inference
A Bayesian belief network models a joint distribution over variables using a DAG to represent variable dependencies and network parameters to represent the conditional probability of each variable given an assignment to its immediate parents. Existing algorithms assume each network parameter is fixed. From a Bayesian perspective, however, these network parameters can be random variables that re...
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