基于对数和惩罚d轨迹损失的微分图估计

Jitendra Tugnait
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引用次数: 0

摘要

我们考虑两个已知具有相似结构的高斯图模型(GGMs)的差值估计问题。GGM结构编码在其精度(逆协方差)矩阵中。在许多应用中,人们感兴趣的是估计两个精度矩阵的差异,以表征两组数据的条件依赖性的潜在变化。大多数现有的差分图估计方法都是基于lasso惩罚损失函数。在本文中,我们分析了一种对数和惩罚d -迹损失函数方法用于微分图学习。提出了一种交替方向乘法器(ADMM)算法来优化目标函数。给出了建立高维环境下估计一致性的理论分析。我们使用一个数值示例来说明我们的方法,其中对数和惩罚D-trace损耗显著优于套索惩罚D-trace损耗以及平滑剪裁绝对偏差(SCAD)惩罚D-trace损耗。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Estimation of Differential Graphs via Log-Sum Penalized D-Trace Loss
We consider the problem of estimating differences in two Gaussian graphical models (GGMs) which are known to have similar structure. The GGM structure is encoded in its precision (inverse covariance) matrix. In many applications one is interested in estimating the difference in two precision matrices to characterize underlying changes in conditional dependencies of two sets of data. Most existing methods for differential graph estimation are based on a lasso penalized loss function. In this paper, we analyze a log-sum penalized D-trace loss function approach for differential graph learning. An alternating direction method of multipliers (ADMM) algorithm is presented to optimize the objective function. Theoretical analysis establishing consistency in estimation in high-dimensional settings is provided. We illustrate our approach using a numerical example where log-sum penalized D-trace loss significantly outperforms lasso-penalized D-trace loss as well as smoothly clipped absolute deviation (SCAD) penalized D-trace loss.
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