Using Genetic Algorithms to Generate Mixture-Process Experimental Designs Involving Control and Noise Variables
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Connie M. Borror | Douglas C. Montgomery | Christine M. Anderson-Cook | Heidi B. Goldfarb | D. Montgomery | C. Borror | C. Anderson‐Cook | C. Anderson-Cook
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