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Selective Greedy Equivalence Search: Finding Optimal Bayesian Networks Using a Polynomial Number of Score Evaluations

机译:选择性贪婪对等搜索:使用分数评估的多项式找到最佳贝叶斯网络

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We introduce Selective Greedy Equivalence Search (SGES), a restricted version of Greedy Equivalence Search (GES). SGES retains the asymptotic correctness of GES but, unlike GES, has polynomial performance guarantees. In particular, we show that when data are sampled independently from a distribution that is perfect with respect to a DAG (g) defined over the observable variables then, in the limit of large data, SGES will identify the equivalence class of (g) after a number of score evaluations that is (1) polynomial in the number of nodes and (2) exponential in various complexity measures including maximum-number-of-parents, maximum-clique-size, and a new measure called v-width that is at least as small as-and potentially much smaller than-the other two. More generally, we show that for any hereditary and equivalence-invariant property Π known to hold in (g), we retain the large-sample optimality guarantees of GES even if we ignore any GES deletion operator during the backward phase that results in a state for which Π does not hold in the common-descendants subgraph.
机译:我们介绍选择性贪婪等效搜索(SGES),它是贪婪等效搜索(GES)的受限版本。 SGES保留了GES的渐近正确性,但与GES不同,它具有多项式性能保证。尤其是,我们表明,当数据从相对于可观察变量定义的DAG(g)理想的分布独立采样时,则在大数据的限制下,SGES将在之后确定(g)的等价类分数评估的数量是(1)节点数量的多项式,(2)在各种复杂性度量中是指数的,包括父代最大数量,maximum-clique-size和称为v-width的新度量,即至少与其他两个产品一样小,甚至可能比其他两个产品小得多。更笼统地说,我们证明了对于(g)中已知的任何遗传和等价不变属性Π,即使我们在导致状态的状态的反向阶段忽略了任何GES删除算子,我们仍然保留了GES的大样本最优性保证。在公共后代子图中Π不成立。

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