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A million variables and more: the Fast Greedy Equivalence Search algorithmfor learning high-dimensional graphical causal models with an application to functionalmagnetic resonance images

机译:一百万个变量及更多:快速贪婪等效搜索算法用于学习高维图形因果模型并应用于功能磁共振图像

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摘要

We describe two modifications that parallelize and reorganize caching in the well-known Greedy Equivalence Search (GES) algorithm for discovering directed acyclic graphs on random variables from sample values. We apply one of these modifications, the Fast Greedy Search (FGS) assuming faithfulness, to an i.i.d. sample of 1,000 units to recover with high precision and good recall an average degree 2 directed acyclic graph (DAG) with one million Gaussian variables. We describe a modification of the algorithm to rapidly find the Markov Blanket of any variable in a high dimensional system. Using 51,000 voxels that parcellate an entire human cortex, we apply the FGS algorithm to Blood Oxygenation Level Dependent (BOLD) time series obtained from resting state fMRI.
机译:我们描述了两种修改,它们并行化和重组了著名的贪婪对等搜索(GES)算法中的缓存,用于从样本值中发现随机变量上的有向无环图。我们对i.i.d应用其中一种修改,即假设忠诚的快速贪婪搜索(FGS)。以1,000个样本为单位进行采样,以高精度和良好的召回率恢复具有100万个高斯变量的平均2度有向无环图(DAG)。我们描述了一种算法的修改,可以快速找到高维系统中任何变量的马尔可夫毯。我们使用51,000个将整个人类皮质分割的体素,将FGS算法应用于从静息状态fMRI获得的血液氧合水平依赖性(BOLD)时间序列。

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