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Defect Type Prediction Method in Manufacturing Process Using Data Mining Technique  

Byeon Sung-Kyu (삼성전자로지텍(주) 국판물류팀)
Kang Chang-Wook (한양대학교 정보경영공학과)
Sim Seong-Bo (한양대학교 산업공학과)
Publication Information
Journal of Korean Society of Industrial and Systems Engineering / v.27, no.2, 2004 , pp. 10-16 More about this Journal
Abstract
Data mining technique is the exploration and analysis, by automatic or semiautomatic means, of large quantities of data in order to discover meaningful patterns and rules. This paper uses a data mining technique for the prediction of defect types in manufacturing Process. The Purpose of this Paper is to model the recognition of defect type Patterns and Prediction of each defect type before it occurs in manufacturing process. The proposed model consists of data handling, defect type analysis, and defect type prediction stages. The performance measurement shows that it is higher in prediction accuracy than logistic regression model.
Keywords
Data mining technique; Defect type; Process data;
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