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首页> 外文期刊>Neural Networks and Learning Systems, IEEE Transactions on >Joint Learning of Multiple Sparse Matrix Gaussian Graphical Models
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Joint Learning of Multiple Sparse Matrix Gaussian Graphical Models

机译:多种稀疏矩阵高斯图形模型的联合学习

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摘要

We consider joint learning of multiple sparse matrix Gaussian graphical models and propose the joint matrix graphical Lasso to discover the conditional independence structures among rows (columns) in the matrix variable under distinct conditions. The proposed approach borrows strength across the different graphical models and is based on the maximum likelihood with penalized row and column precision matrices, respectively. In particular, our model is more parsimonious and flexible than the joint vector graphical models. Furthermore, we establish the asymptotic properties of our model on consistency and sparsistency. And the asymptotic analysis shows that our model enjoys a better convergence rate than the joint vector graphical models. Extensive simulation experiments demonstrate that our methods outperform state-of-the-art methods in identifying graphical structures and estimating precision matrices. Moreover, the effectiveness of our methods is also illustrated via a real data set analysis.
机译:我们考虑对多个稀疏矩阵高斯图形模型进行联合学习,并提出联合矩阵图形套索以发现不同条件下矩阵变量中行(列)之间的条件独立性结构。所提出的方法借鉴了不同图形模型的优势,并分别基于惩罚行和列精度矩阵的最大可能性。特别是,我们的模型比联合矢量图形模型更简洁和灵活。此外,我们建立了关于一致性和稀疏性的模型的渐近性质。渐近分析表明,与联合矢量图形模型相比,我们的模型具有更高的收敛速度。大量的仿真实验表明,在识别图形结构和估计精度矩阵方面,我们的方法优于最新方法。此外,我们的方法的有效性还通过真实的数据集分析得到了说明。

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