Support vector machines (SVMs) have been widely adopted for classification, regression and novelty detection. Recent studies (A. Ben-Hur et al., 2001) proposed to employ them for cluster analysis too. The basis of this support vector clustering (SVC) is density estimation through SVM training. SVC is a boundary-based clustering method, where the support information is used to construct cluster boundaries. Despite its ability to deal with outliers, to handle high dimensional data and arbitrary boundaries in data space, there are two problems in the process of cluster labelling. The first problem is its low efficiency when the number of free support vectors increases. The other problem is that it sometimes produces false negatives. We propose...
Limited by two time-consuming steps, solving the optimization problem and labeling the data points w...
Abstract — Data mining is the process used to analyze a large quantity of heterogeneous data to extr...
Concerning the good description of arbitrarily shaped clusters, collecting accurate support vectors ...
We present a novel clustering method using the approach of support vector machines. Data points are...
We present a novel method for clustering using the support vector machine approach. Data points are ...
Clustering forms natural groupings of data points that maximize intra-cluster similarity and minimiz...
The support vector clustering (SVC) algorithm is a recently emerged unsupervised learning method ins...
Support vector clustering (SVC) is a boundary-based algorithm, which has several advantages over oth...
Artículo de publicación ISISupport Vector Clustering (SVC) is an important density-based clustering ...
Abstract—In this paper a novel Support vector clustering(SVC) method for outlier detection is propos...
Artículo de publicación ISISupport Vector Clustering (SVC) is an important density-based clustering ...
This paper presents an efficient data preprocessing procedure for the of support vector clustering (...
In this note, we propose a novel classification approach by introducing a new clustering method, whi...
An SVM-based clustering algorithm is introduced that clusters data with no a priori knowledge of in...
An SVM-based clustering algorithm is introduced that clusters data with no a priori knowledge of in...
Limited by two time-consuming steps, solving the optimization problem and labeling the data points w...
Abstract — Data mining is the process used to analyze a large quantity of heterogeneous data to extr...
Concerning the good description of arbitrarily shaped clusters, collecting accurate support vectors ...
We present a novel clustering method using the approach of support vector machines. Data points are...
We present a novel method for clustering using the support vector machine approach. Data points are ...
Clustering forms natural groupings of data points that maximize intra-cluster similarity and minimiz...
The support vector clustering (SVC) algorithm is a recently emerged unsupervised learning method ins...
Support vector clustering (SVC) is a boundary-based algorithm, which has several advantages over oth...
Artículo de publicación ISISupport Vector Clustering (SVC) is an important density-based clustering ...
Abstract—In this paper a novel Support vector clustering(SVC) method for outlier detection is propos...
Artículo de publicación ISISupport Vector Clustering (SVC) is an important density-based clustering ...
This paper presents an efficient data preprocessing procedure for the of support vector clustering (...
In this note, we propose a novel classification approach by introducing a new clustering method, whi...
An SVM-based clustering algorithm is introduced that clusters data with no a priori knowledge of in...
An SVM-based clustering algorithm is introduced that clusters data with no a priori knowledge of in...
Limited by two time-consuming steps, solving the optimization problem and labeling the data points w...
Abstract — Data mining is the process used to analyze a large quantity of heterogeneous data to extr...
Concerning the good description of arbitrarily shaped clusters, collecting accurate support vectors ...