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      A million variables and more: the Fast Greedy Equivalence Search algorithm for learning high-dimensional graphical causal models, with an application to functional magnetic resonance images

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          Abstract

          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.

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          Author and article information

          Journal
          101697185
          45948
          Int J Data Sci Anal
          Int J Data Sci Anal
          International journal of data science and analytics
          2364-415X
          2364-4168
          12 December 2016
          1 December 2016
          March 2017
          01 March 2018
          : 3
          : 2
          : 121-129
          Affiliations
          [1 ]Department of Philosophy, Carnegie Mellon University, Pittsburgh, Pennsylvania, United States
          Article
          PMC5380925 PMC5380925 5380925 nihpa833657
          10.1007/s41060-016-0032-z
          5380925
          28393106
          70a53612-eb45-40df-8184-f50eea24ecda
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