Project Portfolio Selection under Uncertainty: A DEA Methodology using Predicted and Actual Frontiers

A. Hassan, W. Cook
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Abstract

Project portfolio management (PPM) is an important area of interest in many organizations. There is a wide literature on each of many different aspects of PPM. The central purpose of the current paper is to focus on a specific sub-area of PPM, namely the project portfolio selection (PPS) problem. Specifically, we develop a new methodology that will aid management in choosing from a set of candidate project proposals, a subset of those project proposals that align with strategic objectives of the organization. Research methodology is based on the data envelopment analysis (DEA) construct to compare a set of decision making units (such as proposed projects) to arrive at an efficiency score for each member of this competing set, derive the best performers, generate an efficiency frontier and quantify inefficiency in the non-best performers. While DEA has been applied in numerous settings, the unique feature of the project portfolio application is the presence of two sets of data, namely pre-implementation “estimates”, and post-implementation “actuals”. Our methodology is unique in that it uses the idea of dual DEA frontiers based on such before and after data for a set of past projects. Dual frontier concept makes not only an important practical contribution to the PPS literature, but as well it opens new directions and provides an innovative advancement in the DEA literature. The requisite data is not publicly available. Therefore, we develop a general methodology to illustrate our technique.
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不确定性下的项目投资组合选择:基于预测边界和实际边界的DEA方法
项目组合管理(PPM)是许多组织感兴趣的一个重要领域。关于PPM的许多不同方面都有广泛的文献。本文的中心目的是关注PPM的一个特定子领域,即项目组合选择(PPS)问题。具体来说,我们开发了一种新的方法,它将帮助管理层从一组候选项目建议中进行选择,这些项目建议是与组织的战略目标一致的项目建议的子集。研究方法是基于数据包络分析(DEA)结构来比较一组决策单元(如拟议的项目),以得出该竞争集合中每个成员的效率得分,得出最佳绩效,生成效率边界并量化非最佳绩效的低效率。虽然DEA已在许多情况下得到应用,但项目组合应用的独特之处在于存在两组数据,即实施前的“估计”和实施后的“实际”。我们的方法是独一无二的,因为它使用了双重DEA边界的概念,该概念基于一组过去项目的前后数据。双边界概念不仅对PPS文献做出了重要的实践贡献,而且为DEA文献开辟了新的方向,提供了创新的进展。所需的数据尚未公开。因此,我们开发了一个通用的方法来说明我们的技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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发文量
10
审稿时长
16 weeks
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