In second-order uncertain Bayesian networks, the conditional probabilities are only known within distributions, i.e., probabilities over probabilities. The delta-method has been applied to extend exact first-order inference methods to propagate both means and variances through sum-product networks derived from Bayesian networks, thereby characterizing epistemic uncertainty, or the uncertainty in the model itself. Alternatively, second-order belief propagation has been demonstrated for polytrees but not for general directed acyclic graph structures. In this work, we extend Loopy Belief Propagation to the setting of second-order Bayesian networks, giving rise to Second-Order Loopy Belief Propagation (SOLBP). For second-order Bayesian networks, SOLBP generates inferences consistent with those generated by sum-product networks, while being more computationally efficient and scalable.
翻译:在二级不确定的贝叶斯人网络中,有条件的概率只在分布范围内才知道,即概率的概率。三角方法已经用于扩大精确的一阶推导方法,通过来自贝叶斯人网络的合成产品网络传播手段和差异,从而将成象不确定性或模型本身的不确定性定性为特征。或者,为多树展示了第二阶推信传播,但对于一般定向的单流图结构则不是如此。在这项工作中,我们把偏执信仰传播扩大到第二阶贝叶斯人网络的设置,从而导致二次偏向信仰传播(SOLBP ) 。对于第二阶巴伊斯人网络,SOLBP产生与由合成产品网络产生的推论一致的推论,同时提高计算效率和可变性。