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Edge selection for undirected graphs

机译:无向图的边缘选择

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This article explores an Edge Selection' procedure to fit an undirected graph to a given data set. Undirected graphs are routinely used to represent, model and analyse associative relationships among the entities on a social, biological or genetic network. Our proposed method combines the computational efficiency of least angle regression and at the same time ensures symmetry of theselected adjacency matrix. Various local and global properties of the edge selection path are explored analytically. In particular, a suitable parameter that controls the amount of shrinkage is identified and we consider several cross-validation techniques to choose an accurate predictive model on the path. The proposed method is illustrated with a detailed simulation study involving models with various levels of sparsity and variability in the nodal degree distributions. Finally, our method is used to select undirected graphs from various real data sets. We employ it for identifying the regulatory network of isoprenoid pathways from a gene-expression data and also to identify genetic network from a high-dimensional breast cancer study data.
机译:本文探讨了“边缘选择”过程,以将无向图拟合到给定的数据集。无向图通常用于表示,建模和分析社会,生物学或遗传网络上实体之间的关联关系。我们提出的方法结合了最小角度回归的计算效率,同时确保了所选邻接矩阵的对称性。分析性地探索了边缘选择路径的各种局部和全局特性。特别是,确定了控制收缩量的合适参数,我们考虑了几种交叉验证技术来选择路径上的准确预测模型。详细的仿真研究说明了所提出的方法,该研究涉及节点度分布中具有各种稀疏性和可变性水平的模型。最后,我们的方法用于从各种实际数据集中选择无向图。我们将其用于从基因表达数据中识别类异戊二烯途径的调控网络,并从高维乳腺癌研究数据中识别遗传网络。

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