Abstract. Recently, the core vector machine (CVM) has shown significant speedups on classification and regression problems with massive data sets. Its performance is also almost as accurate as other state-ofthe-art SVM implementations. By incorporating the orthogonality constraints to diversify the CVM ensembles, this turns out to speed up the maximum margin discriminant analysis (MMDA) algorithm. Extensive comparisons with the MMDA ensemble along with bagging on a number of large data sets show that the proposed diversified CVM ensemble can improve classification performance, and is also faster than the original MMDA algorithm by more than an order of magnitude.
Support vector machines (SVMs) have been promising methods for classification and regression analysi...
Abstract:- Support vector machines (SVMs) tackle classification and regression problems by non-linea...
Collobert, Bengio, and Bengio (2002) recently introduced a novel ap-proach to using a neural network...
Large-margin methods, such as support vector machines (SVMs), have been very successful in classific...
Large-margin methods, such as support vector machines (SVMs), have been very successful in classific...
In this paper, we investigate the problem of exploiting global information to improve the performanc...
In this paper, we investigate the problem of exploiting global information to improve the performanc...
In this paper, we investigate the problem of exploiting global information to improve the performanc...
Abstract. 1 The recently proposed rough margin based support vector machine (RMSVM) could tackle the...
Core Vector Machine(CVM) is suitable for efficient large-scale pattern classification. In this paper...
Classification algorithms have been widely used in many application domains. Most of these domains d...
Support vector machines (SVMs) have been promising methods for classification and regression analysi...
Appropriate training data always play an important role in constructing an efficient classifier to s...
Even though several techniques have been proposed in the literature for achieving multiclass classif...
Even though several techniques have been proposed in the literature for achieving multiclass classif...
Support vector machines (SVMs) have been promising methods for classification and regression analysi...
Abstract:- Support vector machines (SVMs) tackle classification and regression problems by non-linea...
Collobert, Bengio, and Bengio (2002) recently introduced a novel ap-proach to using a neural network...
Large-margin methods, such as support vector machines (SVMs), have been very successful in classific...
Large-margin methods, such as support vector machines (SVMs), have been very successful in classific...
In this paper, we investigate the problem of exploiting global information to improve the performanc...
In this paper, we investigate the problem of exploiting global information to improve the performanc...
In this paper, we investigate the problem of exploiting global information to improve the performanc...
Abstract. 1 The recently proposed rough margin based support vector machine (RMSVM) could tackle the...
Core Vector Machine(CVM) is suitable for efficient large-scale pattern classification. In this paper...
Classification algorithms have been widely used in many application domains. Most of these domains d...
Support vector machines (SVMs) have been promising methods for classification and regression analysi...
Appropriate training data always play an important role in constructing an efficient classifier to s...
Even though several techniques have been proposed in the literature for achieving multiclass classif...
Even though several techniques have been proposed in the literature for achieving multiclass classif...
Support vector machines (SVMs) have been promising methods for classification and regression analysi...
Abstract:- Support vector machines (SVMs) tackle classification and regression problems by non-linea...
Collobert, Bengio, and Bengio (2002) recently introduced a novel ap-proach to using a neural network...