论文标题
使用套索正则化的稳健光谱聚类
Robust spectral clustering using LASSO regularization
论文作者
论文摘要
群集结构检测是分析图的基本任务,以便理解和可视化其功能特征。在不同的集群结构检测方法中,由于其速度和简单性,光谱群集当前是使用最广泛的群集之一。但是,对于一般模型,很少有理论保证可以恢复图的基础分区。因此,本文介绍了光谱聚类的变体,称为1光谱聚类,该变体在与随机块模型密切相关的新随机模型上执行。它的目的是促进1个最小化问题的稀疏本本拟化解决方案,揭示了图的自然结构。通过模拟和真实数据示例的集合确认了我们技术的小噪声扰动的有效性和鲁棒性。
Cluster structure detection is a fundamental task for the analysis of graphs, in order to understand and to visualize their functional characteristics. Among the different cluster structure detection methods, spectral clustering is currently one of the most widely used due to its speed and simplicity. Yet, there are few theoretical guarantee to recover the underlying partitions of the graph for general models. This paper therefore presents a variant of spectral clustering, called 1-spectral clustering, performed on a new random model closely related to stochastic block model. Its goal is to promote a sparse eigenbasis solution of a 1 minimization problem revealing the natural structure of the graph. The effectiveness and the robustness to small noise perturbations of our technique is confirmed through a collection of simulated and real data examples.