Semi-supervised support vector machines (S3VMs) are a kind of popular approaches which try to improve learning performance by exploiting unlabeled data. Though S3VMs have been found helpful in many situations, they may degenerate performance and the resultant generalization ability may be even worse than using the labeled data only. In this paper, we try to reduce the chance of performance degeneration of S3VMs. Our basic idea is that, rather than exploiting all unlabeled data, the unlabeled instances should be selected such that only the ones which are very likely to be helpful are exploited, while some highly risky unlabeled instances are avoided. We propose the S3VM-us method by using hierarchical clustering to select the unlabeled insta...
In this paper, we study cost-sensitive semi-supervised learning where many of the training examples ...
A novel learning algorithm for semisupervised classification is proposed. The proposed method first ...
This paper presents a novel context-sensitive semisupervised support vector machine (CS4VM) classifi...
Semi-supervised support vector machines (S3VMs) are a kind of popular approaches which try to improv...
Abstract—It is usually expected that learning performance can be improved by exploiting unlabeled da...
It is usually expected that, when labeled data are limited, the learning performance can be improved...
Semi-Supervised Support Vector Machines(S3VMs) typically directly estimate the label assignments for...
Due to its wide applicability, the problem of semi-supervised classification is attracting increasin...
Due to its wide applicability, the problem of semi-supervised classification is attracting increasin...
Among the most famous algorithms for solving classification problems are support vector machines (SV...
We introduce a semi-supervised support vector machine (S3yM) method. Given a training set of labeled...
In the first part, we deal with the unlabeled data that are in good quality and follow the condition...
Abstract—In many learning scenarios, supervised learning is hardly applicable due to the unavailabil...
The literature in the area of the semi-supervised binary classification has demonstrated that useful...
The literature in the area of the semi-supervised binary classification has demonstrated that useful...
In this paper, we study cost-sensitive semi-supervised learning where many of the training examples ...
A novel learning algorithm for semisupervised classification is proposed. The proposed method first ...
This paper presents a novel context-sensitive semisupervised support vector machine (CS4VM) classifi...
Semi-supervised support vector machines (S3VMs) are a kind of popular approaches which try to improv...
Abstract—It is usually expected that learning performance can be improved by exploiting unlabeled da...
It is usually expected that, when labeled data are limited, the learning performance can be improved...
Semi-Supervised Support Vector Machines(S3VMs) typically directly estimate the label assignments for...
Due to its wide applicability, the problem of semi-supervised classification is attracting increasin...
Due to its wide applicability, the problem of semi-supervised classification is attracting increasin...
Among the most famous algorithms for solving classification problems are support vector machines (SV...
We introduce a semi-supervised support vector machine (S3yM) method. Given a training set of labeled...
In the first part, we deal with the unlabeled data that are in good quality and follow the condition...
Abstract—In many learning scenarios, supervised learning is hardly applicable due to the unavailabil...
The literature in the area of the semi-supervised binary classification has demonstrated that useful...
The literature in the area of the semi-supervised binary classification has demonstrated that useful...
In this paper, we study cost-sensitive semi-supervised learning where many of the training examples ...
A novel learning algorithm for semisupervised classification is proposed. The proposed method first ...
This paper presents a novel context-sensitive semisupervised support vector machine (CS4VM) classifi...