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Extended scaled prediction variance optimality for modified central composite design

Jin H. Oh, Sung H. Park and Soon S. Kwon

Communications in Statistics - Theory and Methods, 2017, vol. 46, issue 19, 9614-9624

Abstract: Robust parameter designs (RPDs) enable the experimenter to discover how to modify the design of the product to minimize the effect due to variation from noise sources. The aim of this article is to show how this amount of work can be reduced under modified central composite design (MCCD). We propose a measure of extended scaled prediction variance (ESPV) for evaluation of RPDs on MCCD. Using these measures, we show that we can check the error or bias associated with estimating the model parameters and suggest the values of α recommended for MCCS under minimum ESPV.

Date: 2017
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DOI: 10.1080/03610926.2016.1213292

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