首页> 外文期刊>The Annals of Statistics: An Official Journal of the Institute of Mathematical Statistics >STRUCTURE ESTIMATION FOR DISCRETE GRAPHICAL MODELS: GENERALIZED COVARIANCE MATRICES AND THEIR INVERSES
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STRUCTURE ESTIMATION FOR DISCRETE GRAPHICAL MODELS: GENERALIZED COVARIANCE MATRICES AND THEIR INVERSES

机译:离散图形模型的结构估计:广义协方差矩阵及其逆

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We investigate the relationship between the structure of a discrete graphical model and the support of the inverse of a generalized covariance matrix. We show that for certain graph structures, the support of the inverse covariance matrix of indicator variables on the vertices of a graph reflects the conditional independence structure of the graph. Our work extends results that have previously been established only in the context of multivariate Gaussian graphical models, thereby addressing an open question about the significance of the inverse covariance matrix of a non-Gaussian distribution. The proof exploits a combination of ideas from the geometry of exponential families, junction tree theory and convex analysis. These population-level results have various consequences for graph selection methods, both known and novel, including a novel method for structure estimation for missing or corrupted observations. We provide nonasymptotic guarantees for such methods and illustrate the sharpness of these predictions via simulations.
机译:我们研究了离散图形模型的结构与广义协方差矩阵逆的支持之间的关系。我们表明,对于某些图结构,指标变量在图的顶点上的逆协方差矩阵的支持反映了图的条件独立性结构。我们的工作扩展了以前仅在多元高斯图形模型的背景下建立的结果,从而解决了有关非高斯分布逆协方差矩阵的重要性的公开问题。该证明利用了指数族的几何学,结合树理论和凸分析的思想组合。这些总体水平的结果对已知的和新颖的图选择方法有各种后果,包括用于估计缺失或损坏的观测结果的结构的新颖方法。我们为此类方法提供了非渐近保证,并通过仿真说明了这些预测的清晰度。

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