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Semi-supervised support vector regression based on self-training with label uncertainty: An application to virtual metrology in semiconductor manufacturing

Authors
Kang, PilsungKim, DongilCho, Sungzoon
Issue Date
1-6월-2016
Publisher
PERGAMON-ELSEVIER SCIENCE LTD
Keywords
Semi-supervised learning; Support vector regression; Probabilistic local reconstruction; Data generation; Virtual metrology; Semiconductor manufacturing
Citation
EXPERT SYSTEMS WITH APPLICATIONS, v.51, pp.85 - 106
Indexed
SCIE
SCOPUS
Journal Title
EXPERT SYSTEMS WITH APPLICATIONS
Volume
51
Start Page
85
End Page
106
URI
https://scholar.korea.ac.kr/handle/2021.sw.korea/88374
DOI
10.1016/j.eswa.2015.12.027
ISSN
0957-4174
Abstract
Dataset size continues to increase and data are being collected from numerous applications. Because collecting labeled data is expensive and time consuming, the amount of unlabeled data is increasing. Semi-supervised learning (SSL) has been proposed to improve conventional supervised learning methods by training from both unlabeled and labeled data. In contrast to classification problems, the estimation of labels for unlabeled data presents added uncertainty for regression problems. In this paper, a semi supervised support vector regression (SS-SVR) method based on self-training is proposed. The proposed method addresses the uncertainty of the estimated labels for unlabeled data. To measure labeling uncertainty, the label distribution of the unlabeled data is estimated with two probabilistic local reconstruction (PLR) models. Then, the training data are generated by oversampling from the unlabeled data and their estimated label distribution. The sampling rate is different based on uncertainty. Finally, expected margin-based pattern selection (EMPS) is employed to reduce training complexity. We verify the proposed method with 30 regression datasets and a real-world problem: virtual metrology (VM) in semiconductor manufacturing. The experiment results show that the proposed method improves the accuracy by 8% compared with conventional supervised SVR, and the training time for the proposed method is 20% shorter than that of the benchmark methods. (C) 2015 Elsevier Ltd. All rights reserved.
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Kang, Pil sung
공과대학 (산업경영공학부)
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