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Un estudio descriptivo del perfil de los aspirantes a las carreras de ciencias económicas y sociales

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  • Mallo, Paulino E.
  • Artola, María Antonia
  • Zanfrillo, Alicia Inés
  • Morettini, Mariano
  • Galante, Marcelo Javier
  • Busetto, Adrián Raúl
  • Pascual, Mariano Enrique

Abstract

Actualmente el ingreso universitario constituye un tema importante en la gestión universitaria. Ya sea desde las áreas de ingreso de: las unidades académicas, la unidad central de la Universidad o la Secretaría de Políticas Universitarias dependiente del Ministerio de Educación, realizándose acciones conjuntas con el nivel de Educación Superior en cuanto a financiamiento de proyectos de articulación. Reconociendo que el diagnóstico de las debilidades de las instituciones educativas es el aislamiento en que desarrollan su tarea, debemos dotar a las gestiones de herramientas que transformen dicha debilidad en una fortaleza, posibilitando: encuentros, préstamos cognitivos y soluciones solidarias, generando acciones que favorezcan las enseñanzas en ese sentido. Además, la gestión universitaria tiene como propósito dotar al alumnado de herramientas para su eficaz desenvolvimiento en el campo profesional y científico, siendo condición necesaria que el aspirante reúna determinados requisitos mínimos de conocimientos y aptitudes que le permitan desenvolverse exitosamente. Este trabajo pretende identificar grupos de aspirantes con características comunes en cuanto a su desempeño en los exámenes de admisión, utilizando una técnica multivariante de análisis exploratorio, el análisis cluster, a fin de obtener una clasificación que resulte relevante para la adopción de políticas conducentes al mejoramiento de la calidad educativa.

Suggested Citation

  • Mallo, Paulino E. & Artola, María Antonia & Zanfrillo, Alicia Inés & Morettini, Mariano & Galante, Marcelo Javier & Busetto, Adrián Raúl & Pascual, Mariano Enrique, 2007. "Un estudio descriptivo del perfil de los aspirantes a las carreras de ciencias económicas y sociales," Nülan. Deposited Documents 965, Universidad Nacional de Mar del Plata, Facultad de Ciencias Económicas y Sociales, Centro de Documentación.
  • Handle: RePEc:nmp:nuland:965
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    1. G. V. Kass, 1980. "An Exploratory Technique for Investigating Large Quantities of Categorical Data," Journal of the Royal Statistical Society Series C, Royal Statistical Society, vol. 29(2), pages 119-127, June.
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