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Penalized estimation of directed acyclic graphs from discrete data

机译:基于离散数据的有向无环图的惩罚估计

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摘要

Bayesian networks, with structure given by a directed acyclic graph (DAG), are a popular class of graphical models. However, learning Bayesian networks from discrete or categorical data is particularly challenging, due to the large parameter space and the difficulty in searching for a sparse structure. In this article, we develop a maximum penalized likelihood method to tackle this problem. Instead of the commonly used multinomial distribution, we model the conditional distribution of a node given its parents by multi-logit regression, in which an edge is parameterized by a set of coefficient vectors with dummy variables encoding the levels of a node. To obtain a sparse DAG, a group norm penalty is employed, and a blockwise coordinate descent algorithm is developed to maximize the penalized likelihood subject to the acyclicity constraint of a DAG. When interventional data are available, our method constructs a causal network, in which a directed edge represents a causal relation. We apply our method to various simulated and real data sets. The results show that our method is very competitive, compared to many existing methods, in DAG estimation from both interventional and high-dimensional observational data.
机译:贝叶斯网络具有有向无环图(DAG)给出的结构,是一种流行的图形模型。但是,由于参数空间大且难以搜索稀疏结构,因此从离散或分类数据中学习贝叶斯网络尤其具有挑战性。在本文中,我们开发了一种最大惩罚似然方法来解决此问题。代替通常使用的多项式分布,我们通过多对数回归对给定其父级的节点的条件分布进行建模,在该条件下,边由一组系数向量参数化,该向量具有编码节点级别的虚拟变量。为了获得稀疏的DAG,采用组范数罚分,并且开发了一种块状坐标下降算法,以在DAG的非循环性约束下最大化被惩罚的似然性。当有干预数据可用时,我们的方法将构建因果网络,其中有向边表示因果关系。我们将我们的方法应用于各种模拟和真实数据集。结果表明,与许多现有方法相比,我们的方法在根据介入和高维观测数据进行DAG估计方面具有很大的竞争力。

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