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SSVM(Stepwise-Support Vector Machine)을 이용한 반도체 수율 예측A Yields Prediction in the Semiconductor Manufacturing Process Using Stepwise Support Vector Machine

Other Titles
A Yields Prediction in the Semiconductor Manufacturing Process Using Stepwise Support Vector Machine
Authors
안대웅고효헌백준걸김지현김성식
Issue Date
2009
Publisher
대한산업공학회
Keywords
support vector machine; semiconductor yield classification; semiconductor manufacturing process
Citation
산업공학(IE interfaces), v.22, no.3, pp.252 - 262
Indexed
KCI
Journal Title
산업공학(IE interfaces)
Volume
22
Number
3
Start Page
252
End Page
262
URI
https://scholar.korea.ac.kr/handle/2021.sw.korea/121091
ISSN
1225-0996
Abstract
It is crucial to prevent low yields in the semiconductor industry. Since many factors affect variation in yield and they are deeply related, preventing low yield is difficult. There have been substantial researches in the field of yield prediction. Many researchers had used the statistical methods. Many studies have shown that artificial neural network (ANN) achieved better performance than traditional statistical methods. However, despite ANN’s superior performance some problems such as over-fitting and poor explanatory power arise. In order to overcome these limitations, a relatively new machine learning technique, support vector machine (SVM), is introduced to classify the yield. SVM is simple enough to be analyzed mathematically, and it leads to high performances in practical applications. This study presents a new efficient classification methodology, Stepwise-SVM (SSVM), for detecting high and low yields. SSVM is step-by-step adjustment of parameters to be precisely the classification for actual high and low yield lot. The objective of this paper is to examine the feasibility of SVM and SSVM in the yield classification. The experimental results show that SVM and SSVM provides a promising alternative to yield classification for the field data.
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