Semi-Supervised Learning Exploiting Robust Loss Function for Sparse Labeled Data 


Vol. 48,  No. 12, pp. 1343-1348, Dec.  2021
10.5626/JOK.2021.48.12.1343


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  Abstract

This paper proposes a semi-supervised learning method which uses data augmentation and robust loss function when labeled data are extremely sparse. Existing semi-supervised learning methods augment unlabeled data and use one-hot vector labels predicted by the current model if the confidence of the prediction is high. Since it does not use low-confidence data, a recent work has used low-confidence data in the training by utilizing robust loss function. Meanwhile, if labeled data are extremely sparse, the prediction can be incorrect even if the confidence is high. In this paper, we propose a method to improve the performance of a classification model when labeled data are extremely sparse by using predicted probability, instead of one hot vector as the label. Experiments show that the proposed method improves the performance of a classification model.


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  Cite this article

[IEEE Style]

Y. Ahn and K. Shim, "Semi-Supervised Learning Exploiting Robust Loss Function for Sparse Labeled Data," Journal of KIISE, JOK, vol. 48, no. 12, pp. 1343-1348, 2021. DOI: 10.5626/JOK.2021.48.12.1343.


[ACM Style]

Youngjun Ahn and Kyuseok Shim. 2021. Semi-Supervised Learning Exploiting Robust Loss Function for Sparse Labeled Data. Journal of KIISE, JOK, 48, 12, (2021), 1343-1348. DOI: 10.5626/JOK.2021.48.12.1343.


[KCI Style]

안영준, 심규석, "희소 데이터를 위한 강인 손실 함수를 이용한 준 지도 학습," 한국정보과학회 논문지, 제48권, 제12호, 1343~1348쪽, 2021. DOI: 10.5626/JOK.2021.48.12.1343.


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