On clusterings-good, bad and spectral 论文

2002引用 380
Advanced Clustering Algorithms ResearchRough Sets and Fuzzy LogicFace and Expression Recognition

摘要

We propose a new measure for assessing the quality of a clustering. A simple heuristic is shown to give worst-case guarantees under the new measure. Then we present two results regarding the quality of the clustering found by a popular spectral algorithm. One proffers worst case guarantees whilst the other shows that if there exists a "good" clustering then the spectral algorithm will find one close to it.