Resumen: In recent times a growing interest has arose on the development of data-driven techniques to avoid the employ of phenomenological constitutive models. While it is true that, in general, data do not fit perfectly to existing models, and present deviations from the most popular ones, we believe that this does not justify (or, at least, not always) to abandon completely all the acquired knowledge on the constitutive characterization of materials. Instead, what we propose here is, by means of machine learning techniques, to develop correction to those popular models so as to minimize the errors in constitutive modeling. Idioma: Inglés DOI: 10.1007/s12289-018-1448-x Año: 2018 Publicado en: International journal of material forming 12 (2018), 717 – 725 ISSN: 1960-6206 Factor impacto JCR: 1.75 (2018) Categ. JCR: METALLURGY & METALLURGICAL ENGINEERING rank: 27 / 76 = 0.355 (2018) - Q2 - T2 Categ. JCR: ENGINEERING, MANUFACTURING rank: 36 / 49 = 0.735 (2018) - Q3 - T3 Categ. JCR: MATERIALS SCIENCE, MULTIDISCIPLINARY rank: 190 / 293 = 0.648 (2018) - Q3 - T2 Factor impacto SCIMAGO: 0.638 - Materials Science (miscellaneous) (Q2)