Maximum margin clustering was proposed lately and has shown promising performance in recent studies [1, 2]. It extends the theory of support vector machine to unsupervised learning. Despite its good performance, there are three major problems with maximum margin clustering that question its efficiency for real-world applications. First, it is computationally expensive and difficult to scale to large-scale datasets because the number of parameters in maximum margin clustering is quadratic in the number of examples. Second, it requires data preprocessing to ensure that any clustering boundary will pass through the origins, which makes it unsuitable for clustering unbalanced dataset. Third, it is sensitive to the choice of kernel functions, an...
We present a novel clustering method using the approach of support vector machines. Data points are...
Abstract—Most well-known discriminative clustering mod-els, such as spectral clustering (SC) and max...
In this paper, we investigate the problem of exploiting global information to improve the performanc...
Maximum margin clustering (MMC), which borrows the large margin heuristic from support vector machin...
In recent decades, large margin methods such as Support Vector Machines (SVMs) are supposed to be th...
We present a hierarchical maximum-margin clus-tering method for unsupervised data analysis. Our meth...
Motivated by the success of large margin methods in supervised learning, maximum margin clustering (...
Motivated by the success of large margin methods in supervised learning, maximum margin clustering (...
Maximum-margin clustering is an extension of the support vector machine (SVM) to clustering. It part...
Maximum margin clustering (MMC) has recently attracted considerable interests in both the data minin...
We present a maximum margin framework that clusters data using latent vari-ables. Using latent repre...
Support vector clustering (SVC) is a boundary-based algorithm, which has several advantages over oth...
Feature selection plays a fundamental role in many pattern recognition problems. However, most effor...
We present max-margin Bayesian clustering (BMC), a general and robust frame-work that incorporates t...
This paper presents a simple but powerful extension of the maximum margin clustering (MMC) algorithm...
We present a novel clustering method using the approach of support vector machines. Data points are...
Abstract—Most well-known discriminative clustering mod-els, such as spectral clustering (SC) and max...
In this paper, we investigate the problem of exploiting global information to improve the performanc...
Maximum margin clustering (MMC), which borrows the large margin heuristic from support vector machin...
In recent decades, large margin methods such as Support Vector Machines (SVMs) are supposed to be th...
We present a hierarchical maximum-margin clus-tering method for unsupervised data analysis. Our meth...
Motivated by the success of large margin methods in supervised learning, maximum margin clustering (...
Motivated by the success of large margin methods in supervised learning, maximum margin clustering (...
Maximum-margin clustering is an extension of the support vector machine (SVM) to clustering. It part...
Maximum margin clustering (MMC) has recently attracted considerable interests in both the data minin...
We present a maximum margin framework that clusters data using latent vari-ables. Using latent repre...
Support vector clustering (SVC) is a boundary-based algorithm, which has several advantages over oth...
Feature selection plays a fundamental role in many pattern recognition problems. However, most effor...
We present max-margin Bayesian clustering (BMC), a general and robust frame-work that incorporates t...
This paper presents a simple but powerful extension of the maximum margin clustering (MMC) algorithm...
We present a novel clustering method using the approach of support vector machines. Data points are...
Abstract—Most well-known discriminative clustering mod-els, such as spectral clustering (SC) and max...
In this paper, we investigate the problem of exploiting global information to improve the performanc...