论文标题

基于内核的图形学习来自光滑信号:功能视图

Kernel-based Graph Learning from Smooth Signals: A Functional Viewpoint

论文作者

Pu, Xingyue, Chau, Siu Lun, Dong, Xiaowen, Sejdinovic, Dino

论文摘要

图形学习的问题涉及构建明确的拓扑结构,该结构揭示了代表数据实体的节点之间的关系,该节点在许多基于图的表示和算法在机器学习和图形信号处理领域的成功中起着越来越重要的作用。在本文中,我们提出了一个新颖的图形学习框架,该框架结合了节点侧和观察侧信息,尤其是有助于解释图信号中依赖关系结构的协变量。为此,我们将图形信号视为与Kronecker产品内核相关的再现内核Hilbert空间中的功能,并将功能学习与平滑度促进图学习集成在一起,以学习代表节点之间关系的图形。功能学习增加了图形学习对图信号中缺失和不完整信息的鲁棒性。此外,我们开发了一种基于图的新型正则化方法,该方法与Kronecker产品内核结合使用,使我们的模型能够捕获图形所解释的依赖关系,又可以捕获在不同但相关的情况下观察到的图形信号所引起的依赖性。不同的时间点。后者表示图形信号与I.I.D。经典图形学习模型需要的假设。合成和现实世界数据的实验表明,我们的方法在从图形信号中学习有意义的图形拓扑,尤其是在沉重的噪声,缺失值和多重依赖性下,都超过了最先进的模型。

The problem of graph learning concerns the construction of an explicit topological structure revealing the relationship between nodes representing data entities, which plays an increasingly important role in the success of many graph-based representations and algorithms in the field of machine learning and graph signal processing. In this paper, we propose a novel graph learning framework that incorporates the node-side and observation-side information, and in particular the covariates that help to explain the dependency structures in graph signals. To this end, we consider graph signals as functions in the reproducing kernel Hilbert space associated with a Kronecker product kernel, and integrate functional learning with smoothness-promoting graph learning to learn a graph representing the relationship between nodes. The functional learning increases the robustness of graph learning against missing and incomplete information in the graph signals. In addition, we develop a novel graph-based regularisation method which, when combined with the Kronecker product kernel, enables our model to capture both the dependency explained by the graph and the dependency due to graph signals observed under different but related circumstances, e.g. different points in time. The latter means the graph signals are free from the i.i.d. assumptions required by the classical graph learning models. Experiments on both synthetic and real-world data show that our methods outperform the state-of-the-art models in learning a meaningful graph topology from graph signals, in particular under heavy noise, missing values, and multiple dependency.

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