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Tractable Bayesian Network Structure Learning with Bounded Vertex Cover Number

机译:有界顶点覆盖数的可伸缩贝叶斯网络结构学习

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Both learning and inference tasks on Bayesian networks are NP-hard in general. Bounded tree-width Bayesian networks have recently received a lot of attention as a way to circumvent this complexity issue; however, while inference on bounded tree-width networks is tractable, the learning problem remains NP-hard even for tree-width 2. In this paper, we propose bounded vertex cover number Bayesian networks as an alternative to bounded tree-width networks. In particular, we show that both inference and learning can be done in polynomial time for any fixed vertex cover number bound k, in contrast to the general and bounded tree-width cases; on the other hand, we also show that learning problem is W-hard in parameter k. Furthermore, we give an alternative way to learn bounded vertex cover number Bayesian networks using integer linear programming (ILP), and show this is feasible in practice.
机译:贝叶斯网络上的学习和推理任务通常都是NP难的。有界的树宽贝叶斯网络最近作为一种解决此复杂性问题的方法而受到了广泛的关注。然而,尽管对有界树宽网络的推断是容易处理的,但即使对于树宽2,学习问题仍然是NP难的。在本文中,我们提出了有界顶点覆盖数贝叶斯网络作为有界树宽网络的替代方法。尤其是,我们证明,对于任何固定的顶点覆盖数边界k而言,推理和学习都可以在多项式时间内完成,这与一般情况和有界树宽情况相反。另一方面,我们还表明学习问题在参数k中是W-难的。此外,我们提供了一种使用整数线性规划(ILP)学习有界顶点覆盖数贝叶斯网络的替代方法,并证明了这在实践中是可行的。

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