Statistical Analysis and Data Envelopment Analysis to Improve the Efficiency of Manufacturing Process of Electrical Conductors
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Marco Antonio Zamora-Antuñano | Juvenal Rodriguez-Resendiz | Carlos A. Gonzalez-Gutierrez | Wilfrido J. Paredes-García | Jorge Cruz-Salinas | Néstor Méndez-Lozano | José Antonio Altamirano-Corro | José Alfredo Gaytán-Díaz
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