When the historical data are limited, the conditional probabilities associated with the nodes of Bayesian networks are uncertain and can be empirically estimated. Second order estimation methods provide a framework for both estimating the probabilities and quantifying the uncertainty in these estimates. We refer to these cases as uncer tain or second-order Bayesian networks. When such data are complete, i.e., all variable values are observed for each instantiation, the conditional probabilities are known to be Dirichlet-distributed. This paper improves the current state-of-the-art approaches for handling uncertain Bayesian networks by enabling them to learn distributions for their parameters, i.e., conditional probabilities, with incomplete data. We extensively evaluate various methods to learn the posterior of the parameters through the desired and empirically derived strength of confidence bounds for various queries.
翻译:当历史数据有限时,与巴伊西亚网络节点有关的有条件概率不确定,可以进行经验性估算。第二顺序估算方法为估计概率和量化这些估计数的不确定性提供了一个框架。我们将这些案例称为不确定的或二级的巴伊西亚网络。当这些数据完整时,每个即时数据都观察到所有变量值,已知有条件概率是分散的。本文改进了目前处理不确定的巴伊西亚网络的先进方法,使其能够学习参数分布,即有条件概率和不完整数据。我们广泛评估了各种方法,通过各种查询所需的、经验得出的信任圈强度来学习参数的后方。