Using clustering analysis to improve semi-supervised classification

H Gan, N Sang, R Huang, X Tong, Z Dan - Neurocomputing, 2013 - Elsevier
H Gan, N Sang, R Huang, X Tong, Z Dan
Neurocomputing, 2013Elsevier
Semi-supervised classification has become an active topic recently and a number of
algorithms, such as Self-training, have been proposed to improve the performance of
supervised classification using unlabeled data. In this paper, we propose a semi-supervised
learning framework which combines clustering and classification. Our motivation is that
clustering analysis is a powerful knowledge-discovery tool and it may reveal the underlying
data space structure from unlabeled data. In our framework, semi-supervised clustering is …
Semi-supervised classification has become an active topic recently and a number of algorithms, such as Self-training, have been proposed to improve the performance of supervised classification using unlabeled data. In this paper, we propose a semi-supervised learning framework which combines clustering and classification. Our motivation is that clustering analysis is a powerful knowledge-discovery tool and it may reveal the underlying data space structure from unlabeled data. In our framework, semi-supervised clustering is integrated into Self-training classification to help train a better classifier. In particular, the semi-supervised fuzzy c-means algorithm and support vector machines are used for clustering and classification, respectively. Experimental results on artificial and real datasets demonstrate the advantages of the proposed framework.
Elsevier
以上显示的是最相近的搜索结果。 查看全部搜索结果