论文标题
在存在隐藏节点的情况下,从高斯观察结果中学习的联合图形学习
Joint graph learning from Gaussian observations in the presence of hidden nodes
论文作者
论文摘要
当所有节点的信号可用时,通常通过专注于学习单个图的拓扑来解决图形学习问题。但是,许多当代设置都涉及多个相关网络,而且,通常只有在其余部分隐藏的同时只观察到一部分节点。在此激励的情况下,我们提出了一种联合图学习方法,该方法考虑了隐藏(潜在)变量的存在。直觉上,隐藏节点的存在使推理任务解决方案不足和挑战,因此我们通过利用估计图的相似性来克服这种有害的影响。为此,我们假设观察到的信号是从具有潜在变量的高斯马尔可夫随机场中绘制的,并且我们仔细地对隐藏(潜在)节点之间的图相似性建模。然后,我们利用先前考虑的结构提出了一个凸优化问题,该问题通过提供正则化最大似然估计器来解决联合图学习任务。最后,我们将所提出的算法与不同的基准进行比较,并评估其在合成和现实图表上的性能。
Graph learning problems are typically approached by focusing on learning the topology of a single graph when signals from all nodes are available. However, many contemporary setups involve multiple related networks and, moreover, it is often the case that only a subset of nodes is observed while the rest remain hidden. Motivated by this, we propose a joint graph learning method that takes into account the presence of hidden (latent) variables. Intuitively, the presence of the hidden nodes renders the inference task ill-posed and challenging to solve, so we overcome this detrimental influence by harnessing the similarity of the estimated graphs. To that end, we assume that the observed signals are drawn from a Gaussian Markov random field with latent variables and we carefully model the graph similarity among hidden (latent) nodes. Then, we exploit the structure resulting from the previous considerations to propose a convex optimization problem that solves the joint graph learning task by providing a regularized maximum likelihood estimator. Finally, we compare the proposed algorithm with different baselines and evaluate its performance over synthetic and real-world graphs.