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A multiobjective optimization model for project selection with probabilistic considerations [An article from: Socio-Economic Planning Sciences]

A multiobjective optimization model for project selection with probabilistic considerations [An article from: Socio-Economic Planning Sciences]
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A multiobjective optimization model for project selection with probabilistic considerations [An article from: Socio-Economic Planning Sciences]

 
 
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Description

This digital document is a journal article from Socio-Economic Planning Sciences, published by Elsevier in 2006. The article is delivered in HTML format and is available in your Amazon.com Media Library immediately after purchase. You can view it with any web browser.

Description:
When faced with limited resources, project managers must determine which projects to fund at what levels from a pool of potential ones. This problem of project selection is inherently multiobjective since various factors, such as the available budget, the chance of success, and the efficient allocation of the project team, must be considered simultaneously. The uncertainty of the data at the time decisions are made further complicates project selection. In this paper, a multiobjective, integer-constrained optimization model with competing objectives for project selection is formulated using probability distributions to describe costs. The objectives correspond to important project criteria, such as: rank (value), managerial labor needed, and average cost. The subjective rank is determined via the Analytic Hierarchy Process. The model is applied to a data set from a US government agency that involves 84 separate projects. The results indicate improved budgetary efficiency compared to the actual project selection, thus supporting use of the model for public sector project selection. The model is unique since it integrates multiobjective optimization, Monte Carlo simulation, and the Analytic Hierarchy Process.


Product Details
Author:S.A. Gabriel
Digital:16 pages
Publisher:Elsevier
Publication Date:December 01, 2006

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