In this paper we propose a new learning architecture that we call Unbalanced Decision Tree (UDT), attempting to improve existing methods based on Directed Acyclic Graph (DAG) and One-versus-All (OVA) approaches to multi-class pattern classification tasks. Several standard techniques, namely One-versus-One (OVO), OVA, and DAG, are compared against UDT by some benchmark datasets from the University of California, Irvine (UCI) repository of machine learning databases. Our experiments indicate that UDT is faster in testing compared to DAG, while maintaining accuracy comparable to those standard algorithms tested. This new learning architecture UDT is general, and could be applied to any classification task in machine learning in which there are...
The multi-class classification algorithms are widely used by many areas such as machine learning and...
Motivated by applications such as gene expression analysis, binary classification has achieved notab...
As machine learning is getting deployed more and more in security critical applications, the subject...
In this paper, one versus one optimal decision tree support vector machine (OvO-ODT SVM) framework i...
We present a new method of multiclass classification based on the combination of one- vs- all method...
We propose a new technique for support vector machines (SVMs) in tree structures for multiclass clas...
In literature multi-class SVM is constructed using One against All, One against One and Decision tre...
Support vector machines (SVMs) are designed to solve the binary classification problems at the begin...
AbstractBased on the principle of one-against-one support vector machines (SVMs) multi-class classif...
Support vector machines (SVMs), which were originally designed for binary classifications, are an ex...
In this paper we have studied the concept and need of Multiclass classification in scientific resear...
In this paper we present a new multivariate decision tree algorithm LMDT, which combines linear mach...
Several researchers have proposed effective approaches for binary classification in the last years. ...
Real-life datasets are often imbalanced, that is, there are significantly more training samples avai...
Support Vector Machine (SVM) was first proposed by Cortes and Vapnik in 1995. It is developed from t...
The multi-class classification algorithms are widely used by many areas such as machine learning and...
Motivated by applications such as gene expression analysis, binary classification has achieved notab...
As machine learning is getting deployed more and more in security critical applications, the subject...
In this paper, one versus one optimal decision tree support vector machine (OvO-ODT SVM) framework i...
We present a new method of multiclass classification based on the combination of one- vs- all method...
We propose a new technique for support vector machines (SVMs) in tree structures for multiclass clas...
In literature multi-class SVM is constructed using One against All, One against One and Decision tre...
Support vector machines (SVMs) are designed to solve the binary classification problems at the begin...
AbstractBased on the principle of one-against-one support vector machines (SVMs) multi-class classif...
Support vector machines (SVMs), which were originally designed for binary classifications, are an ex...
In this paper we have studied the concept and need of Multiclass classification in scientific resear...
In this paper we present a new multivariate decision tree algorithm LMDT, which combines linear mach...
Several researchers have proposed effective approaches for binary classification in the last years. ...
Real-life datasets are often imbalanced, that is, there are significantly more training samples avai...
Support Vector Machine (SVM) was first proposed by Cortes and Vapnik in 1995. It is developed from t...
The multi-class classification algorithms are widely used by many areas such as machine learning and...
Motivated by applications such as gene expression analysis, binary classification has achieved notab...
As machine learning is getting deployed more and more in security critical applications, the subject...