首页> 外文会议>8th Ibero-American Conference on AI(Advances in Artificial Intelligence ― IBERAMIA 2002), Nov 12-15, 2002, Seville, Spain >Local Search Methods for Learning Bayesian Networks Using a Modified Neighborhood in the Space of DAGs
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Local Search Methods for Learning Bayesian Networks Using a Modified Neighborhood in the Space of DAGs

机译:在DAG的空间中使用改进的邻域学习贝叶斯网络的本地搜索方法

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The dominant approach for learning Bayesian networks from data is based on the use of a scoring metric, that evaluates the fitness of any given candidate network to the data, and a search procedure, that explores the space of possible solutions. The most efficient methods used in this context are (Iterated) Local Search algorithms. These methods use a predefined neighborhood structure that defines the feasible elementary modifications (local changes) that can be applied to a given solution in order to get another, potentially better solution. If the search space is the set of directed acyclic graphs (dags), the usual choices for local changes are arc addition, arc deletion and arc reversal. In this paper we propose a new definition of neighborhood in the dag space, which uses a modified operator for arc reversal. The motivation for this new operator is the observation that local search algorithms experience problems when some arcs are wrongly oriented. We exemplify the general usefulness of our proposal by means of a set of experiments with different metrics and different local search methods, including Hill-Climbing and Greedy Randomized Adaptive Search Procedure (GRASP), as well as using several domain problems.
机译:从数据中学习贝叶斯网络的主要方法是基于评分标准的使用,该评分标准评估任何给定候选网络对数据的适应性,以及搜索过程,探索可能的解决方案的空间。在这种情况下,最有效的方法是(迭代)本地搜索算法。这些方法使用预定义的邻域结构,该结构定义了可以应用于给定解决方案的可行的基本修改(局部更改),以便获得另一个可能更好的解决方案。如果搜索空间是有向无环图(dag)的集合,则局部更改的通常选择是弧添加,弧删除和弧反转。在本文中,我们提出了dag空间中邻域的新定义,该定义使用修改后的算子进行电弧反转。该新运算符的动机是观察到,当某些弧线的方向错误时,本地搜索算法会遇到问题。我们通过一组使用不同指标和不同本地搜索方法的实验(包括爬山和贪婪随机自适应搜索程序(GRASP))以及使用多个域问题来举例说明我们建议的一般用途。

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