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Structural learning of Bayesian networks using local algorithms based on the space of orderings

机译:使用基于有序空间的局部算法对贝叶斯网络进行结构学习

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摘要

Structural learning of Bayesian networks (BNs) is an NP-hard problem which is generally addressed by means of heuristic search algorithms. Despite the fact that earlier proposals for dealing with this task were based on searching the space of Directed Acyclic Graphs (DAGs), there are some alternative approaches. One of these approaches for structural learning consists of searching the space of orderings, as given a certain topological order among the problem variables, it is relatively easy to build (and evaluate) a BN compatible with it. In practice, the latter methods make it possible to obtain good results, but they are still costly in terms of computation. In this article, we prove the correctness of the method used to evaluate each ordering, and we propose some efficient learning algorithms based on it. Our first proposal is based on the Hill-Climbing algorithm, and uses an improved neighbourhood definition. The second algorithm is an extension of the first one, and is based on the well-known Variable Neighbourhood Search metaheuristic. Finally, iterative versions of both algorithms are also proposed. The algorithms have been tested over a set of different domains, and have been compared with other methods such as Hill-Climbing in the space of DAGs or Greedy Equivalent Search, in order to study their behaviour in practice.
机译:贝叶斯网络(BNs)的结构学习是一个NP难题,通常通过启发式搜索算法解决。尽管事实上有关此任务的较早建议是基于搜索有向无环图(DAG)的空间,但仍有一些替代方法。这些用于结构学习的方法之一是在有问题的变量之间给定某种拓扑顺序的情况下,搜索有序的空间,相对容易地构建(和评估)与其兼容的BN。实际上,后一种方法有可能获得良好的结果,但是在计算方面仍然很昂贵。在本文中,我们证明了用于评估每个排序的方法的正确性,并基于此方法提出了一些有效的学习算法。我们的第一个建议基于Hill-Climbing算法,并使用了改进的邻域定义。第二种算法是第一种算法的扩展,它基于著名的“可变邻域搜索”元启发式算法。最后,还提出了两种算法的迭代版本。该算法已在一组不同的域中进行了测试,并已与其他方法(例如DAG领域的Hill-Climbing)或Greedy Equivalent Search进行了比较,以便在实践中研究其行为。

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