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NTIS 바로가기한국경영과학회지 = Journal of the Korean Operations Research and Management Science Society, v.31 no.2, 2006년, pp.69 - 85
박찬규 (동국대학교 경영학과)
Transductive Support Vector Machine(TSVM) is one of semi-supervised learning algorithms which exploit the domain structure of the whole data by considering labeled and unlabeled data together. Although it was proposed several years ago, there has been no efficient algorithm which can handle problems...
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