Optimal decision policy for real options under general Markovian dynamics
Autor: | Felipe Sainz, Gonzalo Cortazar, Lorenzo Naranjo |
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Rok vydání: | 2021 |
Předmět: |
050210 logistics & transportation
Mathematical optimization Geometric Brownian motion 021103 operations research Information Systems and Management General Computer Science Stochastic volatility Stochastic process Computer science 05 social sciences Monte Carlo method 0211 other engineering and technologies Markov process 02 engineering and technology Variance (accounting) Management Science and Operations Research Industrial and Manufacturing Engineering symbols.namesake Modeling and Simulation 0502 economics and business symbols Valuation (algebra) Valuation (finance) Optimal decision |
Zdroj: | European Journal of Operational Research. 288:634-647 |
ISSN: | 0377-2217 |
DOI: | 10.1016/j.ejor.2020.06.010 |
Popis: | The Least-Squares Monte Carlo Method (LSM) has become the standard tool to solve real options modeled as an optimal switching problem. The method has been shown to deliver accurate valuation results under complex and high dimensional stochastic processes; however, the accuracy of the underlying decision policy is not guaranteed. For instance, an inappropriate choice of regression functions can lead to noisy estimates of the optimal switching boundaries or even continuation/switching regions that are not clearly separated. As an alternative to estimate these boundaries, we formulate a simulation-based method that starts from an initial guess of them and then iterates until reaching optimality. The algorithm is applied to a classical mine under a wide variety of underlying dynamics for the commodity price process. The method is first validated under a one-dimensional geometric Brownian motion and then extended to general Markovian processes. We consider two general specifications: a two-factor model with stochastic variance and a rich jump structure, and a four-factor model with stochastic cost-of-carry and stochastic volatility. The method is shown to be robust, stable, and easy-to-implement, converging to a more profitable strategy than the one obtained with LSM. |
Databáze: | OpenAIRE |
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