Cost-Sensitive Semi-Supervised Support Vector Machine
Li, Yu-Feng (Nanjing University, China) | Kwok, James T. (Hong Kong University of Science and Technology) | Zhou, Zhi-Hua (Nanjing University, China)
In this paper, we study cost-sensitive semi-supervised learning where many of the training examples are unlabeled and different misclassification errors are associated with unequal costs. This scenario occurs in many real-world applications. For example, in some disease diagnosis, the cost of erroneously diagnosing a patient as healthy is much higher than that of diagnosing a healthy person as a patient. Also, the acquisition of labeled data requires medical diagnosis which is expensive, while the collection of unlabeled data such as basic health information is much cheaper. We propose the CS4VM (Cost-Sensitive Semi-Supervised Support Vector Machine) to address this problem. We show that the CS4VM, when given the label means of the unlabeled data, closely approximates the supervised cost-sensitive SVM that has access to the ground-truth labels of all the unlabeled data. This observation leads to an efficient algorithm which first estimates the label means and then trains the CS4VM with the plug-in label means by an efficient SVM solver. Experiments on a broad range of data sets show that the proposed method is capable of reducing the total cost and is computationally efficient.
Jul-15-2010
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- Massachusetts > Middlesex County
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- Wisconsin > Dane County
- Asia > China
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- Jiangsu Province > Nanjing (0.04)
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- Health & Medicine > Diagnostic Medicine (0.35)
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