Publication: Selección y utilización de niveles de desagregación adecuados en pronósticos de series temporales: caso de estudio en una empresa de suscripción utilizando el proceso analítico jerárquico
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Alvarado Valencia, Jorge Andrés
García Buitrago, Javier Alexander
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Universidad Pablo de Olavide.
Abstract
El problema de la agregación o desagregación de series temporales para la realización de pronósticos se presenta frecuentemente en situaciones empresariales y econométricas. Este trabajo presenta una metodología novedosa para la selección de un nivel de desagregación adecuado de las series temporales a partir del cual realizar pronósticos. La metodología toma en cuenta criterios cualitativos -los recursos empresariales y el entorno de decisión- y cuantitativos -predictibilidad de las series y calidad de la información-, utilizando la metodología de toma de decisiones multicriterio conocida como el proceso analítico jerárquico (AHP) para llegar a una decisión final. Un caso de estudio en una empresa de suscripción muestra la utilidad de combinar AHP con técnicas de pronóstico de series de tiempo y la importancia de utilizar múltiples criterios en la selección de un nivel de desagregación adecuado.
Hierarchical aggregation/disaggregation of time series in order to make forecasts is a frequent challenge in business and econometric scenarios. This work presents a novel approach for selecting an adequate time series disaggregation level as a starting point for making forecasts. The methodology combines qualitative criteria - such as business resources and decision environment - and quantitative criteria - such as information quality and forecastability - in a multicriteria decision making task which is addressed through the analytic hierarchy process (AHP) technique. Results from a study case in a subscription business model company show the usefulness of combining AHP and time series forecasting techniques and the importance of multicriteria decision-making in the task of selecting an adequate aggregation/disaggregation level.
Hierarchical aggregation/disaggregation of time series in order to make forecasts is a frequent challenge in business and econometric scenarios. This work presents a novel approach for selecting an adequate time series disaggregation level as a starting point for making forecasts. The methodology combines qualitative criteria - such as business resources and decision environment - and quantitative criteria - such as information quality and forecastability - in a multicriteria decision making task which is addressed through the analytic hierarchy process (AHP) technique. Results from a study case in a subscription business model company show the usefulness of combining AHP and time series forecasting techniques and the importance of multicriteria decision-making in the task of selecting an adequate aggregation/disaggregation level.
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Revista de Métodos Cuantitativos para la Economía y la Empresa Vol.15 (junio de 2013) p. 45-64
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Revista de Métodos Cuantitativos para la Economía y la Empresa Vol.15 (junio de 2013) p. 45-64




