posted on 2025-05-11, 16:58authored byAli EshraghAli Eshragh, Jerzy A. Filar, Thomas Kalinowski, Sogol Mohammadian
We study a certain polytope arising from embedding the Hamiltonian cycle problem in a discounted Markov decision process. The Hamiltonian cycle problem can be reduced to finding particular extreme points of a certain polytope associated with the input graph. This polytope is a subset of the space of discounted occupational measures. We characterize the feasible bases of the polytope for a general input graph G and determine the expected numbers of different types of feasible bases when the underlying graph is random. We utilize these results to demonstrate that augmenting certain additional constraints to reduce the polyhedral domain can eliminate a large number of feasible bases that do not correspond to Hamiltonian cycles. Finally, we develop a random walk algorithm on the feasible bases of the reduced polytope and present some numerical results. We conclude with a conjecture on the feasible bases of the reduced polytope.
History
Journal title
Mathematics of Operations Research
Volume
45
Issue
2
Pagination
713-731
Publisher
Institute for Operations Research and the Management Sciences (INFORMS)