GBSVM (Granular-ball Support Vector Machine) is an important attempt to use the coarse granularity of a granular-ball as the input to construct a classifier instead of a data point. It is the first classifier whose input contains no points, i.e., $x_i$, in the history of machine learning. However, on the one hand, its dual model is not derived, and the algorithm has not been implemented and can not be applied. On the other hand, there are some errors in its existing model. To address these problems, this paper has fixed the errors of the original model of GBSVM, and derived its dual model. Furthermore, an algorithm is designed using particle swarm optimization algorithm to solve the dual model. The experimental results on the UCI benchmark ...
The standard twin support vector machine (TSVM) uses the hinge loss function which leads to noise se...
This paper aims at providing the concept of information granulation in Granular computing based patt...
In this paper, we propose a stochastic gradient descent algorithm, called stochastic gradient descen...
AbstractMachine learning based on data has been a focus in the field of artificial intelligence rese...
With emergence of biomedical informatics, Web intelligence, and E-business, new challenges are comin...
With emergence of biomedical informatics, Web intelligence, and E-business, new challenges are comin...
With emergence of biomedical informatics, Web intelligence, and E-business, new challenges are comin...
The granular support vector machine (GSVM) can effectively improve the learning efficiency of suppor...
With emergence of biomedical informatics, Web intelligence, and E-business, new challenges are comin...
AbstractMachine learning based on data has been a focus in the field of artificial intelligence rese...
Granular-ball computing is an efficient, robust, and scalable learning method for granular computing...
Granular ball computing (GBC), as an efficient, robust, and scalable learning method, has become a p...
Kernel machines such as Support Vector Machines (SVMs) have been widely used in various data mining ...
Kernel machines such as Support Vector Machines (SVMs) have been widely used in various data mining ...
AbstractSupport Vector Machine (SVM) is a new modeling method. It has shown good performance in many...
The standard twin support vector machine (TSVM) uses the hinge loss function which leads to noise se...
This paper aims at providing the concept of information granulation in Granular computing based patt...
In this paper, we propose a stochastic gradient descent algorithm, called stochastic gradient descen...
AbstractMachine learning based on data has been a focus in the field of artificial intelligence rese...
With emergence of biomedical informatics, Web intelligence, and E-business, new challenges are comin...
With emergence of biomedical informatics, Web intelligence, and E-business, new challenges are comin...
With emergence of biomedical informatics, Web intelligence, and E-business, new challenges are comin...
The granular support vector machine (GSVM) can effectively improve the learning efficiency of suppor...
With emergence of biomedical informatics, Web intelligence, and E-business, new challenges are comin...
AbstractMachine learning based on data has been a focus in the field of artificial intelligence rese...
Granular-ball computing is an efficient, robust, and scalable learning method for granular computing...
Granular ball computing (GBC), as an efficient, robust, and scalable learning method, has become a p...
Kernel machines such as Support Vector Machines (SVMs) have been widely used in various data mining ...
Kernel machines such as Support Vector Machines (SVMs) have been widely used in various data mining ...
AbstractSupport Vector Machine (SVM) is a new modeling method. It has shown good performance in many...
The standard twin support vector machine (TSVM) uses the hinge loss function which leads to noise se...
This paper aims at providing the concept of information granulation in Granular computing based patt...
In this paper, we propose a stochastic gradient descent algorithm, called stochastic gradient descen...