Mexican Stock Return Prediction with Differential Evolution for Hyperparameter Tuning
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Neil Hernández-Gress | Laura Hervert-Escobar | Ramón Hinojosa Alejandro | Luis A. Trejo | N. EnriqueGonzález | N. Hernández-Gress | Laura Hervert-Escobar | N. EnriqueGonzález
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