Journal of the Korean Data and Information Science Society
- Volume 18 Issue 3
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- Pages.629-636
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- 2007
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- 1598-9402(pISSN)
Semi-Supervised Learning Using Kernel Estimation
Abstract
A kernel type semi-supervised estimate is proposed. The proposed estimate is based on the penalized least squares loss and the principle of Gaussian Random Fields Model. As a result, we can estimate the label of new unlabeled data without re-computation of the algorithm that is different from the existing transductive semi-supervised learning. Also our estimate is viewed as a general form of Gaussian Random Fields Model. We give experimental evidence suggesting that our estimate is able to use unlabeled data effectively and yields good classification.
Keywords