A nonparametric algorithm for optimal stopping based on robust optimization
Optimal stopping is a fundamental class of stochastic dynamic optimization problems with numerous applications in finance and operations management. We introduce a new approach for solving computationally-demanding stochastic optimal stopping problems with known probability distributions. The approa...
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Zusammenfassung: | Optimal stopping is a fundamental class of stochastic dynamic optimization
problems with numerous applications in finance and operations management. We
introduce a new approach for solving computationally-demanding stochastic
optimal stopping problems with known probability distributions. The approach
uses simulation to construct a robust optimization problem that approximates
the stochastic optimal stopping problem to any arbitrary accuracy; we then
solve the robust optimization problem to obtain near-optimal Markovian stopping
rules for the stochastic optimal stopping problem.
In this paper, we focus on designing algorithms for solving the robust
optimization problems that approximate the stochastic optimal stopping
problems. These robust optimization problems are challenging to solve because
they require optimizing over the infinite-dimensional space of all Markovian
stopping rules. We overcome this challenge by characterizing the structure of
optimal Markovian stopping rules for the robust optimization problems. In
particular, we show that optimal Markovian stopping rules for the robust
optimization problems have a structure that is surprisingly simple and
finite-dimensional. We leverage this structure to develop an exact
reformulation of the robust optimization problem as a zero-one bilinear program
over totally unimodular constraints. We show that the bilinear program can be
solved in polynomial time in special cases, establish computational complexity
results for general cases, and develop polynomial-time heuristics by relating
the bilinear program to the maximal closure problem from graph theory.
Numerical experiments demonstrate that our algorithms for solving the robust
optimization problems are practical and can outperform state-of-the-art
simulation-based algorithms in the context of widely-studied stochastic optimal
stopping problems from high-dimensional option pricing. |
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DOI: | 10.48550/arxiv.2103.03300 |