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Variational Wishart Approximation for Graphical Model Selection: Monoscale and Multiscale Models

机译:图形模型选择的变分Wishart逼近:单尺度和多尺度模型

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摘要

Graphical models are powerful tools to describe high-dimensional data; they provide a compact graphical representation of the interactions between different variables and such representation enables efficient inference. In particular for Gaussian graphical models, such representation is encoded by the zero pattern of the precision matrix (i.e., inverse covariance). Existing approaches to learning Gaussian graphical models often leverage the framework of penalized likelihood, and therefore suffer from the issue of regularization selection. In this paper, we address the structure learning problem of Gaussian graphical models from a variational Bayesian perspective. Specifically, sparse promoting priors are imposed on the off-diagonal elements of the precision matrix. We then approximate the posterior distribution of the precision matrix by a Wishart distribution using the framework of variational Bayes, and derive efficient natural gradient based algorithms to learn the model. We consider both monoscale and multiscale graphical models. Numerical results show that the proposed method can learn sparse graphs that can reliably describe the data in an automated fashion.
机译:图形模型是描述高维数据的强大工具。它们提供了不同变量之间相互作用的紧凑图形表示,并且这种表示可以实现有效的推理。特别是对于高斯图形模型,这种表示由精度矩阵的零模式(即逆协方差)编码。现有的学习高斯图形模型的方法通常利用惩罚似然的框架,因此存在正则化选择的问题。在本文中,我们从变分贝叶斯角度解决了高斯图形模型的结构学习问题。具体而言,将稀疏促进先验强加于精度矩阵的非对角元素上。然后,我们使用变分贝叶斯框架通过Wishart分布对精度矩阵的后验分布进行近似,并得出基于自然梯度的高效算法来学习该模型。我们考虑单尺度和多尺度图形模型。数值结果表明,该方法可以学习稀疏图,该稀疏图可以自动方式可靠地描述数据。

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