Spectral clustering and its extensions usually consist of two steps: (1) constructing a graph and computing the relaxed solution; (2) discretizing relaxed solutions. Although the former has been extensively investigated, the discretization techniques are mainly heuristic methods, e.g., k-means, spectral rotation. Unfortunately, the goal of the existing methods is not to find a discrete solution that minimizes the original objective. In other words, the primary drawback is the neglect of the original objective when computing the discrete solution. Inspired by the first-order optimization algorithms, we propose to develop a first-order term to bridge the original problem and discretization algorithm, which is the first non-heuristic to the be...
The popular K-means clustering partitions a data set by minimiz-ing a sum-of-squares cost function. ...
The popular K-means clustering partitions a data set by minimiz-ing a sum-of-squares cost function. ...
International audienceSpectral clustering refers to a family of well-known unsupervised learning alg...
Spectral clustering has been a popular data clustering algorithm. This category of approaches often ...
Spectral clustering has been a popular data clustering algorithm. This category of approaches often ...
The theoretical analysis of spectral clustering mainly focuses on consistency, while there is relati...
Clustering is a fundamental research topic in the field of data mining. Optimizing the objective fun...
Clustering is a fundamental research topic in the field of data mining. Optimizing the objective fun...
The theoretical analysis of spectral clustering is mainly devoted to consistency, while there is lit...
Spectral Clustering as a relaxation of the normalized/ratio cut has become one of the standard graph...
When it comes to clustering nonconvex shapes, two paradigms are used to find the most suitable clust...
When it comes to clustering nonconvex shapes, two paradigms are used to find the most suitable clust...
When it comes to clustering nonconvex shapes, two paradigms are used to find the most suitable clust...
This paper provides both theoretical and algorithmic results for the l 1-relaxation of the Cheeger c...
Data clustering is one of the fundamental research problems in data mining and machine learning. Mos...
The popular K-means clustering partitions a data set by minimiz-ing a sum-of-squares cost function. ...
The popular K-means clustering partitions a data set by minimiz-ing a sum-of-squares cost function. ...
International audienceSpectral clustering refers to a family of well-known unsupervised learning alg...
Spectral clustering has been a popular data clustering algorithm. This category of approaches often ...
Spectral clustering has been a popular data clustering algorithm. This category of approaches often ...
The theoretical analysis of spectral clustering mainly focuses on consistency, while there is relati...
Clustering is a fundamental research topic in the field of data mining. Optimizing the objective fun...
Clustering is a fundamental research topic in the field of data mining. Optimizing the objective fun...
The theoretical analysis of spectral clustering is mainly devoted to consistency, while there is lit...
Spectral Clustering as a relaxation of the normalized/ratio cut has become one of the standard graph...
When it comes to clustering nonconvex shapes, two paradigms are used to find the most suitable clust...
When it comes to clustering nonconvex shapes, two paradigms are used to find the most suitable clust...
When it comes to clustering nonconvex shapes, two paradigms are used to find the most suitable clust...
This paper provides both theoretical and algorithmic results for the l 1-relaxation of the Cheeger c...
Data clustering is one of the fundamental research problems in data mining and machine learning. Mos...
The popular K-means clustering partitions a data set by minimiz-ing a sum-of-squares cost function. ...
The popular K-means clustering partitions a data set by minimiz-ing a sum-of-squares cost function. ...
International audienceSpectral clustering refers to a family of well-known unsupervised learning alg...