Online Linear Programming with Replenishment
Yuze Chen, Yuan Zhou, Baichuan Mo, Jie Ying, Yufei Ruan, Zhou Ye

TL;DR
This paper introduces new algorithms and regret bounds for online linear programming with stochastic replenishment, addressing operational scenarios where resources arrive gradually, and provides empirical validation of the methods.
Contribution
It develops novel algorithms and regret analyses for three distributional regimes in replenishment-based online linear programming, extending classical results to this new setting.
Findings
Achieves $ ilde{O}( oot{T} otag)$ regret for bounded distributions.
Attains $O( ext{log } T)$ regret for finite-support, non-degenerate distributions.
Provides empirical evidence of algorithm advantages over classical methods.
Abstract
We study an online linear programming (OLP) model in which inventory is not provided upfront but instead arrives gradually through an exogenous stochastic replenishment process. This replenishment-based formulation captures operational settings, such as e-commerce fulfillment, perishable supply chains, and renewable-powered systems, where resources are accumulated gradually and initial inventories are small or zero. The introduction of dispersed, uncertain replenishment fundamentally alters the structure of classical OLPs, creating persistent stockout risk and eliminating advance knowledge of the total budget. We develop new algorithms and regret analyses for three major distributional regimes studied in the OLP literature: bounded distributions, finite-support distributions, and continuous-support distributions with a non-degeneracy condition. For bounded distributions, we design an…
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Taxonomy
TopicsAdvanced Bandit Algorithms Research · Optimization and Search Problems · Supply Chain and Inventory Management
