Spectral clustering has been applied in various applications. But there still exist some important issues to be resolved, among which the two major ones are to (1) specify the scale parameter in calculating the similarity between data objects, and (2) select propoer eigenvectors to reduce data dimensionality. Though these topics have been studied extensively, the existing methods cannot work well in some complicated scenarios, which limits the wide deployment of the spectral clustering method. In this work, we revisit the above two problems and propose three contributions to the field: 1) a unified framework is designed to study the impact of the scale parameter on similarity between data objects. This framework can easily accommodate vario...
Spectral clustering is usually used to detect non-convex clusters. Despite being an effective method...
Spectral clustering approaches have led to well-accepted algorithms for finding accurate clusters in...
Part 5: Algorithms and Data ManagementInternational audienceFinding clusters in data is a challengin...
Spectral clustering is a powerful method for finding structure in a dataset through the eigenvectors...
The construction of a similarity matrix is one significant step for the spectral clustering algorith...
Spectral clustering is a powerful method for finding structure in data through the eigenvectors of a...
Spectral clustering refers to a class of techniques which rely on the eigenstructure of a similarity...
Spectral clustering methods are common graph-based approaches to clustering of data. Spectral cluste...
We study a number of open issues in spectral clustering: (i) Selecting the appropriate scale of anal...
Spectral clustering is a powerful clustering method for document data set. However, spectral cluster...
Spectral clustering has found extensive use in many areas. Most traditional spectral clustering algo...
Abstract. Spectral methods have received attention as powerful theoretical and prac-tical approaches...
Part 2: AlgorithmsInternational audienceIn this paper we propose a new method for choosing the numbe...
Spectral clustering is currently a widely used method for community detection. This Final Year Proje...
In cluster analysis, data are clustered into meaningful groups so that the objects in the same group...
Spectral clustering is usually used to detect non-convex clusters. Despite being an effective method...
Spectral clustering approaches have led to well-accepted algorithms for finding accurate clusters in...
Part 5: Algorithms and Data ManagementInternational audienceFinding clusters in data is a challengin...
Spectral clustering is a powerful method for finding structure in a dataset through the eigenvectors...
The construction of a similarity matrix is one significant step for the spectral clustering algorith...
Spectral clustering is a powerful method for finding structure in data through the eigenvectors of a...
Spectral clustering refers to a class of techniques which rely on the eigenstructure of a similarity...
Spectral clustering methods are common graph-based approaches to clustering of data. Spectral cluste...
We study a number of open issues in spectral clustering: (i) Selecting the appropriate scale of anal...
Spectral clustering is a powerful clustering method for document data set. However, spectral cluster...
Spectral clustering has found extensive use in many areas. Most traditional spectral clustering algo...
Abstract. Spectral methods have received attention as powerful theoretical and prac-tical approaches...
Part 2: AlgorithmsInternational audienceIn this paper we propose a new method for choosing the numbe...
Spectral clustering is currently a widely used method for community detection. This Final Year Proje...
In cluster analysis, data are clustered into meaningful groups so that the objects in the same group...
Spectral clustering is usually used to detect non-convex clusters. Despite being an effective method...
Spectral clustering approaches have led to well-accepted algorithms for finding accurate clusters in...
Part 5: Algorithms and Data ManagementInternational audienceFinding clusters in data is a challengin...