Title :
An Integer Programming Approach for Evaluating R&D Funding Decisions With Optimal Budget Allocations
Author :
Eckhause, Jeremy M. ; Gabriel, Steven A. ; Hughes, Danny R.
Author_Institution :
Logistics Manage. Inst., McLean, VA, USA
Abstract :
The use of real options techniques for research and development (R&D) project selection to mitigate the uncertainties has been shown to increase overall project value. While recent approaches employing stochastic dynamic programs (SDP) produce optimal solutions for many applications, this approach does not easily accommodate the inclusion of an optimal a priori budget allocation or side constraints, since their formulations are scenario specific. We formulate an integer program (IP) whose solution is equivalent to previous SDP real options models but facilitates the incorporation of these additional features and may be solved using commercial IP solvers. This IP formulation can solve what would otherwise be a nested two-level problem where the lower level problem is an SDP. We then compare the performance of the IP to that received by the SDP using a case study from the literature.
Keywords :
budgeting; decision making; integer programming; project management; research and development; stochastic programming; IP formulation; R&D funding decision evaluation; SDP; SDP real option models; commercial IP solvers; integer programming approach; nested two-level problem; optimal a priori budget allocation; optimal solutions; project value; real options techniques; research and development project selection; stochastic dynamic programs; uncertainty mitigation; Dynamic programming; Linear programming; Research and development; Resource management; Stochastic processes; Integer programming (IP); project selection; real options; research and development (R&D) portfolios; stochastic dynamic programming; two-level problems;
Journal_Title :
Engineering Management, IEEE Transactions on
DOI :
10.1109/TEM.2012.2183132