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Graph Estimation From Multi-Attribute Data

机译:基于多属性数据的图形估计

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摘要

Undirected graphical models are important in a number of modern applications that involve exploring or exploiting dependency structures underlying the data. For example, they are often used to explore complex systems where connections between entities are not well understood, such as in functional brain networks or genetic networks. Existing methods for estimating structure of undirected graphical models focus on scenarios where each node represents a scalar random variable, such as a binary neural activation state or a continuous mRNA abundance measurement, even though in many real world problems, nodes can represent multivariate variables with much richer meanings, such as whole images, text documents, or multi-view feature vectors. In this paper, we propose a new principled framework for estimating the structure of undirected graphical models from such multivariate (or multi-attribute) nodal data. The structure of a graph is inferred through estimation of non-zero partial canonical correlation between nodes. Under a Gaussian model, this strategy is equivalent to estimating conditional independencies between random vectors represented by the nodes and it generalizes the classical problem of covariance selection (). We relate the problem of estimating non-zero partial canonical correlations to maximizing a penalized Gaussian likelihood objective and develop a method that efficiently maximizes this objective. Extensive simulation studies demonstrate the effectiveness of the method under various conditions. We provide illustrative applications to uncovering gene regulatory networks from gene and protein profiles, and uncovering brain connectivity graph from positron emission tomography data. Finally, we provide sufficient conditions under which the true graphical structure can be recovered correctly.
机译:无方向性图形模型在许多现代应用程序中都很重要,这些应用程序涉及探索或利用数据基础的依赖关系结构。例如,它们通常用于探索复杂的系统,在这些系统中对实体之间的连接了解不多,例如在功能性大脑网络或遗传网络中。现有的估计无向图模型结构的方法着重于每个节点代表一个标量随机变量(例如二进制神经激活状态或连续的mRNA丰度测量)的场景,即使在许多现实世界中的问题中,节点也可以代表具有很多特征的多元变量。更丰富的含义,例如整个图像,文本文档或多视图特征向量。在本文中,我们提出了一个新的有原则的框架,用于从此类多变量(或多属性)节点数据估计无向图模型的结构。通过估计节点之间的非零部分正则相关性可以推断出图的结构。在高斯模型下,该策略等效于估计节点表示的随机向量之间的条件独立性,并且推广了协方差选择的经典问题。我们将估计非零偏正则相关性的问题与最大化惩罚高斯似然目标联系起来,并开发出一种有效地最大化该目标的方法。大量的仿真研究证明了该方法在各种条件下的有效性。我们提供了示例性的应用程序,用于从基因和蛋白质概况中揭示基因调控网络,并从正电子发射断层扫描数据中揭示大脑的连通性图。最后,我们提供了充分的条件,在这些条件下,可以正确恢复真实的图形结构。

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