Olesen K G, Madsen A L
Dept. of Comput. Sci., Aalborg Univ.
IEEE Trans Syst Man Cybern B Cybern. 2002;32(1):21-31. doi: 10.1109/3477.979956.
The authors present a method for decomposition of Bayesian networks into their maximal prime subgraphs. The correctness of the method is proven and results relating the maximal prime subgraph decomposition (MPD) to the maximal complete subgraphs of the moral graph of the original Bayesian network are presented. The maximal prime subgraphs of a Bayesian network can be organized as a tree which can be used as the computational structure for LAZY propagation. We also identify a number of tasks performed on Bayesian networks that can benefit from MPD. These tasks are: divide and conquer triangulation, hybrid propagation algorithms combining exact and approximative inference techniques, and incremental construction of junction trees. We compare the proposed algorithm with standard algorithms for decomposition of undirected graphs into their maximal prime subgraphs. The discussion shows that the proposed algorithm is simpler, more easy to comprehend, and it has the same complexity as the standard algorithms.
作者提出了一种将贝叶斯网络分解为其最大素子图的方法。该方法的正确性得到了证明,并给出了将最大素子图分解(MPD)与原始贝叶斯网络道德图的最大完全子图相关的结果。贝叶斯网络的最大素子图可以组织成一棵树,该树可作为LAZY传播的计算结构。我们还确定了一些在贝叶斯网络上执行的任务,这些任务可以从MPD中受益。这些任务是:分治三角剖分、结合精确和近似推理技术的混合传播算法以及连接树的增量构建。我们将所提出的算法与将无向图分解为其最大素子图的标准算法进行了比较。讨论表明,所提出的算法更简单、更易于理解,并且与标准算法具有相同的复杂度。