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Perspectiva multivariante de los pronósticos en las pymes industriales de Ibagué (Colombia)

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  • Germán Rubio Guerrero

Abstract

El objetivo del presente artículo de investigación es presentar un sistema multidimensional de pronósticos para las pymes industriales de Ibagué (Tolima, Colombia) a través de la caracterización de estas herramientas en dichas empresas. Se utilizó el método mixto de investigación que comprendió elementos cualitativos y cuantitativos. La muestra fue de 42 empresas pequenas y medianas seleccionadas a través del muestreo aleatorio estratificado de una población de 93 organizaciones. Las técnicas de investigación utilizadas fueron la observación directa, una encuesta y entrevistas a los directivos de estas pymes. El resultado de este proyecto de investigación fue la propuesta de un sistema multidimensional de pronósticos para las pymes de Ibagué, que incluyó aspectos relacionados con la importancia de las predicciones en la estrategia y el desempeno organizacional, capacitación y software de pronósticos, y exactitud y combinación de los pronósticos, todos ellos como parte de la dimensión “planeación y estrategia de pronósticos”.

Suggested Citation

  • Germán Rubio Guerrero, 2017. "Perspectiva multivariante de los pronósticos en las pymes industriales de Ibagué (Colombia)," Revista Facultad de Ciencias Económicas, Universidad Militar Nueva Granada, vol. 25(2), pages 25-40, September.
  • Handle: RePEc:col:000180:015748
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    File URL: https://revistas.unimilitar.edu.co/index.php/rfce/article/view/3067
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    References listed on IDEAS

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