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Efficient Intervention Design for Causal Discovery with Latents

机译:延迟因果发现的有效干预设计

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We consider recovering a causal graph in presence of latent variables, where we seek to minimize the cost of interventions used in the recovery process. We consider two intervention cost models: (1) a linear cost model where the cost of an intervention on a subset of variables has a linear form, and (2) an identity cost model where the cost of an intervention is the same, regardless of what variables it is on, i.e., the goal is just to minimize the number of interventions. Under the linear cost model, we give an algorithm to identify the ancestral relations of the underlying causal graph, achieving within a 2-factor of the optimal intervention cost. This approximation factor can be improved to 1 + ∈ for any ∈ > 0 under some mild restrictions. Under the identity cost model, we bound the number of interventions needed to recover the entire causal graph, including the latent variables, using a parameterization of the causal graph through a special type of colliders. In particular, we introduce the notion of p-colliders, that are colliders between pair of nodes arising from a specific type of conditioning in the causal graph, and provide an upper bound on the number of interventions as a function of the maximum number of p-colliders between any two nodes in the causal graph.
机译:我们考虑在存在潜在变量的情况下恢复因果图,我们寻求最小化恢复过程中使用的干预费用。我们考虑了两个干预成本模型:(1)线性成本模型,其中介入的变量子集的成本具有线性形式,(2)无论的干预成本都是相同的身份成本模型它的变量是什么,即目标只是为了最小化干预措施。在线性成本模型下,我们提供了一种算法来识别潜在因果图的祖先关系,实现了最佳干预成本的2因素。在一些温和的限制下,该近似因子可以改善为1 + 0的任何∈> 0。在身份成本模型下,我们使用通过特殊类型的煤机使用因果图的参数化来绑定恢复整个因果图所需的干预次数。特别是,我们介绍了P碰撞者的概念,即来自因果图中的特定类型的调节的一对节点之间的侵占机,并在作为最大p的最大数量的函数时提供上限的上限-Colliders在因果图中的任何两个节点之间。

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