Clustering is a fundamental task in machine learning and data analysis. A large number of clustering algorithms has been developed over the past decades. Among these algorithms, the recently developed spectral clustering methods have consistently outperformed traditional clustering algorithms. Spectral clustering algorithms, however, have limited applicability to large-scale problems due to their high computational complexity. We propose a new approach for scaling spectral clustering methods that is based on the idea of replacing the entire data set with a small set of representative data points and performing the spectral clustering on the representatives. The main contribution is a new approach for efficiently identifying the representati...
Abstract. Spectral clustering algorithm has been shown to be more effective in finding clusters than...
Many kernel-based clustering algorithms do not scale up to high-dimensional large datasets. The simi...
This paper focuses on scalability and robustness of spectral clustering for extremely large-scale da...
Clustering is a fundamental task in machine learning and data analysis. A large number of clustering...
In many applications, we need to cluster large-scale data objects. However, some recently proposed c...
Spectral clustering is one of the most popular clustering approaches. Despite its good performance, ...
International audienceThe problem of clustering has been an important problem since the early 20th c...
International audienceThe problem of clustering has been an important problem since the early 20th c...
Spectral clustering is one of the most important clustering approaches, often yielding performance ...
Spectral clustering enjoys its success in both data clustering and semi-supervised learning. But, mo...
In the past decades, Spectral Clustering (SC) has become one of the most effective clustering approa...
Spectral clustering is a powerful clustering method for document data set. However, spectral cluster...
Spectral clustering is a powerful clustering method for document data set. However, spectral cluster...
Spectral clustering has attracted much research interest in recent years since it can yield impressi...
Spectral clustering approaches have led to well-accepted algorithms for finding accurate clusters in...
Abstract. Spectral clustering algorithm has been shown to be more effective in finding clusters than...
Many kernel-based clustering algorithms do not scale up to high-dimensional large datasets. The simi...
This paper focuses on scalability and robustness of spectral clustering for extremely large-scale da...
Clustering is a fundamental task in machine learning and data analysis. A large number of clustering...
In many applications, we need to cluster large-scale data objects. However, some recently proposed c...
Spectral clustering is one of the most popular clustering approaches. Despite its good performance, ...
International audienceThe problem of clustering has been an important problem since the early 20th c...
International audienceThe problem of clustering has been an important problem since the early 20th c...
Spectral clustering is one of the most important clustering approaches, often yielding performance ...
Spectral clustering enjoys its success in both data clustering and semi-supervised learning. But, mo...
In the past decades, Spectral Clustering (SC) has become one of the most effective clustering approa...
Spectral clustering is a powerful clustering method for document data set. However, spectral cluster...
Spectral clustering is a powerful clustering method for document data set. However, spectral cluster...
Spectral clustering has attracted much research interest in recent years since it can yield impressi...
Spectral clustering approaches have led to well-accepted algorithms for finding accurate clusters in...
Abstract. Spectral clustering algorithm has been shown to be more effective in finding clusters than...
Many kernel-based clustering algorithms do not scale up to high-dimensional large datasets. The simi...
This paper focuses on scalability and robustness of spectral clustering for extremely large-scale da...