AbstractIn this paper, we propose a decision tree twin support vector machine (DTTSVM) for multi-class classification. To realize our DTTSVM, there are two main steps: (1), a binary tree is constructed based on the best separating principle, which maximizing the distance between the classes. (2), in our binary tree, the binary TWSVM decision model is built for each node to obtain our DTTSVM. By using the decision tree model, our DTTSVM effectively overcomes the possible ambiguous occurred in multi- TWSVM and MBSVM. The preliminary experimental results indicate that the proposed method produces simple decision trees that generalize well with respect to multi-TWSVM and MBSVM
A variant of support vector machines is proposed in which the empirical error is expressed as a disc...
In this paper we have studied the concept and need of Multiclass classification in scientific resear...
AbstractThis paper propose a new algorithm, termed as LPTWSVM, for binary classification problem by ...
AbstractIn this paper, we propose a decision tree twin support vector machine (DTTSVM) for multi-cla...
Support vector machines (SVMs) are designed to solve the binary classification problems at the begin...
In binary classification problems, two classes normally have different tendencies. More complex, the...
Key ideas from statistical learning theory and support vector machines are generalized to decision t...
In this paper we review and evaluate recent decision tree approaches to multi-class SVM for benchmar...
Twin Support Vector Machine (TWSVM) is an emerging machine learning method suitable for both classif...
Discrete support vector machines (DSVM), originally proposed for binary classification problems, hav...
. The solution of binary classification problems using support vector machines (SVMs) is well develo...
We propose a new technique for support vector machines (SVMs) in tree structures for multiclass clas...
We introduce a framework, which we call Divide-by-2 (DB2), for extending support vector machines (SV...
We propose new methods for support vector machines using a tree architecture for multi-class classif...
Various popular machine learning techniques, like support vector machines, are originally conceived ...
A variant of support vector machines is proposed in which the empirical error is expressed as a disc...
In this paper we have studied the concept and need of Multiclass classification in scientific resear...
AbstractThis paper propose a new algorithm, termed as LPTWSVM, for binary classification problem by ...
AbstractIn this paper, we propose a decision tree twin support vector machine (DTTSVM) for multi-cla...
Support vector machines (SVMs) are designed to solve the binary classification problems at the begin...
In binary classification problems, two classes normally have different tendencies. More complex, the...
Key ideas from statistical learning theory and support vector machines are generalized to decision t...
In this paper we review and evaluate recent decision tree approaches to multi-class SVM for benchmar...
Twin Support Vector Machine (TWSVM) is an emerging machine learning method suitable for both classif...
Discrete support vector machines (DSVM), originally proposed for binary classification problems, hav...
. The solution of binary classification problems using support vector machines (SVMs) is well develo...
We propose a new technique for support vector machines (SVMs) in tree structures for multiclass clas...
We introduce a framework, which we call Divide-by-2 (DB2), for extending support vector machines (SV...
We propose new methods for support vector machines using a tree architecture for multi-class classif...
Various popular machine learning techniques, like support vector machines, are originally conceived ...
A variant of support vector machines is proposed in which the empirical error is expressed as a disc...
In this paper we have studied the concept and need of Multiclass classification in scientific resear...
AbstractThis paper propose a new algorithm, termed as LPTWSVM, for binary classification problem by ...