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NTIS 바로가기정보처리학회논문지. KIPS transactions on software and data engineering. 소프트웨어 및 데이터 공학, v.11 no.11, 2022년, pp.455 - 464
김종훈 (LX하우시스) , 오하영 (성균관대학교 인공지능융합학과)
There are two unique characteristics of the datasets from a manufacturing process. They are the severe class imbalance and lots of Out-of-Distribution samples. Some good strategies such as the oversampling over the minority class, and the down-sampling over the majority class, are well known to hand...
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