Representation learning and predictive classification: Application with an electric arc furnace
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R. B. Gopaluni | Lee D. Rippon | A. Bouchoucha | I. Yousef | B. Hosseini | J. F. Beaulieu | C. Prévost | M. Ruel | S. L. Shah | B. Hosseini | A. Bouchoucha | I. Yousef | L. Rippon | C. Prévost | M. Ruel | S. Shah
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