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DAG-GNN: DAG Structure Learning with Graph Neural Networks

机译:DAG-GNN:DAG结构与图形神经网络学习

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Learning a faithful directed acyclic graph (DAG) from samples of a joint distribution is a challenging combinatorial problem, owing to the intractable search space superexponential in the number of graph nodes. A recent breakthrough formulates the problem as a continuous optimization with a structural constraint that ensures acyclicity (Zheng et al., 2018). The authors apply the approach to the linear structural equation model (SEM) and the least-squares loss function that are statistically well justified but nevertheless limited. Motivated by the widespread success of deep learning that is capable of capturing complex nonlinear mappings, in this work we propose a deep generative model and apply a variant of the structural constraint to learn the DAG. At the heart of the generative model is a variational autoencoder parameterized by a novel graph neural network architecture, which we coin DAG-GNN. In addition to the richer capacity, an advantage of the proposed model is that it naturally handles discrete variables as well as vector-valued ones. We demonstrate that on synthetic data sets, the proposed method learns more accurate graphs for nonlinearly generated samples; and on benchmark data sets with discrete variables, the learned graphs are reasonably close to the global optima. The code is available at https://github.com/fishmoon1234/DAG-GNN.
机译:从联合分布的样本中学习忠实的指导的无循环图(DAG)是一个具有挑战性的组合问题,由于图形节点的数量在难以应答的搜索空间。最近的突破将问题与结构约束的连续优化一样,确保了acyclicity(Zheng等,2018)。作者将方法应用于线性结构方程模型(SEM)和最小二乘损失功能,这些损耗功能是统计上好的合理的,但仍然有限。在这项工作中,能够捕获复杂的非线性映射的深度学习的广泛成功,我们提出了一个深入的生成模型,并应用了结构约束的变体来学习DAG。在生成模型的核心,是由新颖的图形神经网络架构参数化的变形式自动化器,我们将DAG-GNN硬币。除了丰富的容量之外,所提出的模型的优点是它自然地处理离散变量以及矢量值。我们证明,在合成数据集上,所提出的方法了解非线性产生的样本的更准确的图表;在具有离散变量的基准数据集上,学习图表合理地接近全局Optima。代码可在https://github.com/formmoon1234/dag-gnn上获得。

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