Metodología para la selección de proyectos en el sector asegurador en Colombia

139 páginas.

Detalles Bibliográficos
Autor Principal: Rodríguez Mesa, Marly Astrid
Otros Autores: Rueda Velasco, Feizar Javier.
Formato: Desconocido (Unknown)
Lenguaje:Español (Spanish)
Publicado: Universidad de La Sabana 2013
Materias:
Acceso en línea:http://hdl.handle.net/10818/6799
id ir-10818-6799
recordtype dspace
institution Universidad de La Sabana
collection DSpace
language Español (Spanish)
topic Evaluación de proyectos -- Metodología
Evaluación de proyectos -- Investigaciones
Compañías de seguros -- Colombia
spellingShingle Evaluación de proyectos -- Metodología
Evaluación de proyectos -- Investigaciones
Compañías de seguros -- Colombia
Rodríguez Mesa, Marly Astrid
Metodología para la selección de proyectos en el sector asegurador en Colombia
description 139 páginas.
author2 Rueda Velasco, Feizar Javier.
author_facet Rueda Velasco, Feizar Javier.
Rodríguez Mesa, Marly Astrid
format Desconocido (Unknown)
author Rodríguez Mesa, Marly Astrid
author_sort Rodríguez Mesa, Marly Astrid
title Metodología para la selección de proyectos en el sector asegurador en Colombia
title_short Metodología para la selección de proyectos en el sector asegurador en Colombia
title_full Metodología para la selección de proyectos en el sector asegurador en Colombia
title_fullStr Metodología para la selección de proyectos en el sector asegurador en Colombia
title_full_unstemmed Metodología para la selección de proyectos en el sector asegurador en Colombia
title_sort metodología para la selección de proyectos en el sector asegurador en colombia
publisher Universidad de La Sabana
publishDate 2013
url http://hdl.handle.net/10818/6799
_version_ 1679478225884938240
spelling ir-10818-67992019-11-21T19:54:26Z Metodología para la selección de proyectos en el sector asegurador en Colombia Rodríguez Mesa, Marly Astrid Rueda Velasco, Feizar Javier. Evaluación de proyectos -- Metodología Evaluación de proyectos -- Investigaciones Compañías de seguros -- Colombia 139 páginas. La selección óptima de la cartera de proyectos es una decisión crucial en las organizaciones, siendo este un “proceso complejo”. En este trabajo, se propone una herramienta integral que permita determinar la cartera óptima de proyectos a ejecutar de un portafolio de proyectos significativos. Con este fin se plantea una metodología multicriterial que contempla criterios económicos, financieros, niveles de riesgo y contribución a los objetivos organizacionales, a través de la combinación del método cuantitativo y cualitativo apoyada de un modelo heurístico y un ciclo de retroalimentación de la misma. Dicha metodología fue validada en una empresa del sector asegurador colombiano. Esta puede ser utilizar para construir nuevas herramientas de apoyo para la selección óptima de proyectos más robusta o para otros sectores. Nota: Para consultar la carta de autorización de publicación de este documento por favor copie y pegue el siguiente enlace en su navegador de internet: http://hdl.handle.net/10818/8783 2013-04-11T16:41:18Z 2013-04-11T16:41:18Z 2012 2013-04-11 masterThesis Tesis de maestría publishedVersion Ahmed, N. U., & Gupta, J. N. (1987). An efficient heuristic algorithm for selecting projects. Computers and Industrial Engineering. 12,(3), pp. 153-158. Álamos Consulting. (2011, Julio 8). Proyectos Sector Seguros. [online]. Disponible en: www.alamoconsulting.com/proyectos/referencias/seguros Alinezhad, A. Zohrebandian, M & Dehdar, F. (2010). Portfolio Selection using Data Envelopment Analysis with common weights. Iranian Journal of Optimization. pp. 323-333. Aloysius, J. A., & Rosenthal, E. C. (1999). 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