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Objective Bayesian search of gaussian directed acyclic graphical models for ordered variables with non-local priors

机译:高斯定向非循环图形模型的客观贝叶斯搜索,查找具有非局部先验的有序变量

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Directed acyclic graphical (DAG) models are increasingly employed in the study of physical and biological systems to model direct influences between variables. Identifying the graph from data is a challenging endeavor, which can be more reasonably tackled if the variables are assumed to satisfy a given ordering; in this case we simply have to estimate the presence or absence of each potential edge. Working under this assumption, we propose an objective Bayesian method for searching the space of Gaussian DAG models, which provides a rich output from minimal input. We base our analysis on non-local parameter priors, which are especially suited for learning sparse graphs, because they allow a faster learning rate, relative to ordinary local parameter priors, when the true unknown sampling distribution belongs to a simple model. We implement an efficient stochastic search algorithm, which deals effectively with data sets having sample size smaller than the number of variables, and apply our method to a variety of simulated and real data sets. Our approach compares favorably, in terms of the ROC curve for edge hit rate versus false alarm rate, to current state-of-the-art frequentist methods relying on the assumption of ordered variables; under this assumption it exhibits a competitive advantage over the PC-algorithm, which can be considered as a frequentist benchmark for unordered variables. Importantly, we find that our method is still at an advantage for learning the skeleton of the DAG, when the ordering of the variables is only moderately mis-specified. Prospectively, our method could be coupled with a strategy to learn the order of the variables, thus dropping the known ordering assumption.
机译:在物理和生物系统的研究中,越来越多地采用有向非循环图形(DAG)模型来对变量之间的直接影响进行建模。从数据中识别图形是一项具有挑战性的工作,如果假设变量满足给定的顺序,则可以更合理地解决该问题。在这种情况下,我们只需要估计每个潜在边的存在与否。在此假设下,我们提出了一种用于搜索高斯DAG模型空间的客观贝叶斯方法,该方法可从最少的输入中获得丰富的输出。我们的分析基于非局部参数先验,它特别适合于学习稀疏图,因为当真正的未知采样分布属于一个简单模型时,它们比普通的局部参数先验具有更快的学习速度。我们实现了一种高效的随机搜索算法,该算法可有效处理样本量小于变量数量的数据集,并将我们的方法应用于各种模拟和真实数据集。就边缘命中率与误报率的ROC曲线而言,我们的方法与依赖于有序变量假设的当前最先进的频频方法相比具有优势。在这种假设下,与PC算法相比,它表现出竞争优势,可以将PC算法视为无序变量的频繁基准。重要的是,当变量的顺序只是适度地错误指定时,我们发现我们的方法仍然在学习DAG的骨架方面处于优势。潜在地,我们的方法可以与学习变量顺序的策略相结合,从而放弃已知的排序假设。

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