Publication | Open Access
A Graph Autoencoder Approach to Causal Structure Learning
54
Citations
10
References
2019
Year
Artificial IntelligenceStructured PredictionEngineeringMachine LearningCausal Relation ExtractionCausal InferenceData ScienceData MiningGraph SizeLarge Causal GraphsPublic HealthCausal ModelPredictive AnalyticsKnowledge DiscoveryComputer ScienceCausal StructureCausal ReasoningGraph TheoryCausal Structure LearningCausalityGraph Autoencoder ApproachGraph Neural Network
Causal structure learning has been a challenging task in the past decades and several mainstream approaches such as constraint- and score-based methods have been studied with theoretical guarantees. Recently, a new approach has transformed the combinatorial structure learning problem into a continuous one and then solved it using gradient-based optimization methods. Following the recent state-of-the-arts, we propose a new gradient-based method to learn causal structures from observational data. The proposed method generalizes the recent gradient-based methods to a graph autoencoder framework that allows nonlinear structural equation models and is easily applicable to vector-valued variables. We demonstrate that on synthetic datasets, our proposed method outperforms other gradient-based methods significantly, especially on large causal graphs. We further investigate the scalability and efficiency of our method, and observe a near linear training time when scaling up the graph size.
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