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Structure Learning with Adaptive Random Neighborhood Informed MCMC

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In this paper, we introduce a novel MCMC sampler, PARNI-DAG, for a fully-Bayesian approach to the problem of structure learning under observational data. Under the assumption of causal sufficiency, the algorithm allows for approximate sampling directly from the posterior distribution on Directed Acyclic Graphs (DAGs). PARNI-DAG performs efficient sampling of DAGs via locally informed, adaptive random neighborhood proposal that results in better mixing properties. In addition, to ensure better scalability with the number of nodes, we couple PARNI-DAG with a pre-tuning procedure of the sampler's parameters that exploits a skeleton graph derived through some constraint-based or scoring-based algorithms. Thanks to these novel features, PARNI-DAG quickly converges to high-probability regions and is less likely to get stuck in local modes in the presence of high correlation between nodes in high-dimensional settings. After introducing the technical novelties in PARNI-DAG, we empirically demonstrate its mixing efficiency and accuracy in learning DAG structures on a variety of experiments.

Alberto Caron, Xitong Liang, Samuel Livingstone, Jim Griffin• 2023

Related benchmarks

TaskDatasetResultRank
Structure learningecoli70 n=100
SHD37.55
11
Structure learningmagic-irri n=100
SHD91.85
11
Structure learningmagic-niab n=100
SHD64.14
11
Estimating posterior edge probabilitiesgsim100
MSE1.72
8
Structure learningarth150 n=100
SHD97.6
7
DAG structure learningPROTEIN
MSE19.44
4
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