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Simultaneous Clustering and Estimation of Heterogeneous Graphical Models

机译:异构图形模型的同时聚类和估计

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摘要

We consider joint estimation of multiple graphical models arising from heterogeneous and high-dimensional observations. Unlike most previous approaches which assume that the cluster structure is given in advance, an appealing feature of our method is to learn cluster structure while estimating heterogeneous graphical models. This is achieved via a high dimensional version of Expectation Conditional Maximization (ECM) algorithm (). A joint graphical lasso penalty is imposed on the conditional maximization step to extract both homogeneity and heterogeneity components across all clusters. Our algorithm is computationally efficient due to fast sparse learning routines and can be implemented without unsupervised learning knowledge. The superior performance of our method is demonstrated by extensive experiments and its application to a Glioblastoma cancer dataset reveals some new insights in understanding the Glioblastoma cancer. In theory, a non-asymptotic error bound is established for the output directly from our high dimensional ECM algorithm, and it consists of two quantities: statistical error (statistical accuracy) and optimization error (computational complexity). Such a result gives a theoretical guideline in terminating our ECM iterations.
机译:我们考虑对来自异质和高维观测的多个图形模型进行联合估计。与大多数先前的假设聚类结构预先给出的方法不同,我们方法的一个吸引人的特征是在估计异构图形模型的同时学习聚类结构。这是通过期望条件最大化(ECM)算法()的高维版本实现的。对条件最大化步骤施加联合图形套索惩罚,以提取所有集群中的同质性和异质性成分。由于快速的稀疏学习例程,我们的算法在计算上非常有效,并且可以在无监督学习知识的情况下实现。广泛的实验证明了我们方法的优越性能,其在胶质母细胞瘤癌症数据集中的应用揭示了理解胶质母细胞瘤癌症的一些新见识。从理论上讲,直接为我们的高维ECM算法的输出建立一个非渐近误差界限,它由两个量组成:统计误差(统计精度)和优化误差(计算复杂度)。这样的结果为终止我们的ECM迭代提供了理论指导。

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