English

Dynamic Programming in Ordered Vector Space

Optimization and Control 2026-02-02 v2

Abstract

New approaches to the theory of dynamic programming view dynamic programs as families of policy operators acting on partially ordered sets. In this paper, we extend these ideas by shifting from arbitrary partially ordered sets to ordered vector spaces. The integrated algebraic and order structure in such spaces leads to sharper fixed point results. These fixed point results can then be exploited to obtain optimality properties. We illustrate our results through applications ranging from firm management to data valuation. These applications include features from the recent literature on dynamic programming, including risk-sensitive preferences, nonlinear discounting, and state-dependent discounting. In all cases we establish existence of optimal policies, characterize them in terms of Bellman optimality relationships, and prove convergence of major algorithms.

Keywords

Cite

@article{arxiv.2503.06055,
  title  = {Dynamic Programming in Ordered Vector Space},
  author = {Nisha Peng and John Stachurski},
  journal= {arXiv preprint arXiv:2503.06055},
  year   = {2026}
}