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具有潜在变量的多个差分网络的联合学习

Joint Learning of Multiple Differential Networks With Latent Variables.

作者信息

Ou-Yang Le, Zhang Xiao-Fei, Zhao Xing-Ming, Wang Debby D, Wang Fu Lee, Lei Baiying, Yan Hong

出版信息

IEEE Trans Cybern. 2019 Sep;49(9):3494-3506. doi: 10.1109/TCYB.2018.2845838. Epub 2018 Jul 6.

DOI:10.1109/TCYB.2018.2845838
PMID:29994625
Abstract

Graphical models have been widely used to learn the conditional dependence structures among random variables. In many controlled experiments, such as the studies of disease or drug effectiveness, learning the structural changes of graphical models under two different conditions is of great importance. However, most existing graphical models are developed for estimating a single graph and based on a tacit assumption that there is no missing relevant variables, which wastes the common information provided by multiple heterogeneous data sets and underestimates the influence of latent/unobserved relevant variables. In this paper, we propose a joint differential network analysis (JDNA) model to jointly estimate multiple differential networks with latent variables from multiple data sets. The JDNA model is built on a penalized D-trace loss function, with group lasso or generalized fused lasso penalties. We implement a proximal gradient-based alternating direction method of multipliers to tackle the corresponding convex optimization problems. Extensive simulation experiments demonstrate that JDNA model outperforms state-of-the-art methods in estimating the structural changes of graphical models. Moreover, a series of experiments on several real-world data sets have been performed and experiment results consistently show that our proposed JDNA model is effective in identifying differential networks under different conditions.

摘要

图形模型已被广泛用于学习随机变量之间的条件依赖结构。在许多对照实验中,如疾病或药物疗效研究,了解图形模型在两种不同条件下的结构变化非常重要。然而,现有的大多数图形模型是为估计单个图而开发的,并且基于一个隐含假设,即不存在缺失的相关变量,这浪费了多个异构数据集提供的共同信息,并低估了潜在/未观察到的相关变量的影响。在本文中,我们提出了一种联合差分网络分析(JDNA)模型,用于从多个数据集中联合估计具有潜在变量的多个差分网络。JDNA模型基于惩罚D-迹损失函数构建,具有组套索或广义融合套索惩罚。我们实现了一种基于近端梯度的乘子交替方向法来解决相应的凸优化问题。大量的模拟实验表明,JDNA模型在估计图形模型的结构变化方面优于现有方法。此外,我们在几个真实世界数据集上进行了一系列实验,实验结果一致表明,我们提出的JDNA模型在识别不同条件下的差分网络方面是有效的。

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