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Data mining approach to dual response optimization

Authors
Lee, Dong Hee
Issue Date
Jul-2017
Publisher
Springer Verlag
Keywords
Design of experiments; Dual response optimization; Patient rule induction method
Citation
Lecture Notes in Computer Science, v.10404, pp 467 - 477
Pages
11
Indexed
SCOPUS
Journal Title
Lecture Notes in Computer Science
Volume
10404
Start Page
467
End Page
477
URI
https://scholarworks.bwise.kr/hanyang/handle/2021.sw.hanyang/203536
DOI
10.1007/978-3-319-62392-4_34
ISSN
0302-9743
1611-3349
Abstract
"In manufacturing process optimization, analyzing a large volume of operational data is getting attention due to the development of data processing techniques. One of important issues in the process optimization is a simultaneous optimization of mean and variance of a response variable. It is called dual response optimization (DRO). Traditional DRO methods build statistical models for the mean and variance of the response variable by fitting the models to experimental data. Then, an optimal setting of input variables is obtained by analyzing the fitted models. This model based approach assumes that the statistical model is fitted well to the data. However, it is often difficult to satisfy this assumption when dealing with a large volume of operational data from manufacturing line. In such a case, data mining approach is an attractive alternative. We proposes a particular data mining method by modifying patient rule induction method for DRO. The proposed method obtains an optimal setting of the input variables directly from the operational data where mean and variance are optimized. We explain a detailed procedure of the proposed method with case examples.
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