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A Graph Autoencoder Approach to Causal Structure Learning (1911.07420v1)

Published 18 Nov 2019 in cs.LG and stat.ML

Abstract: 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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Authors (4)
  1. Ignavier Ng (30 papers)
  2. Shengyu Zhu (26 papers)
  3. Zhitang Chen (38 papers)
  4. Zhuangyan Fang (5 papers)
Citations (70)

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