Optimizing Urban Service Allocation with Time-Constrained Restless Bandits
Yi Mao, Andrew Perrault

TL;DR
This paper introduces a novel extension of restless multi-armed bandit algorithms to optimize the scheduling of urban service inspections, balancing impact, constraints, and surprise inspections, with demonstrated improvements on real data.
Contribution
We develop a new RMAB approach with action window constraints, combining MDP reformulation, integer programming, and neural network modeling for urban service inspection scheduling.
Findings
Achieves up to 24% simulation improvement in inspection impact.
Demonstrates 33% real data improvement in inspection outcomes.
Provides robustness to surprise inspections.
Abstract
Municipal inspections are an important part of maintaining the quality of goods and services. In this paper, we approach the problem of intelligently scheduling service inspections to maximize their impact, using the case of food establishment inspections in Chicago as a case study. The Chicago Department of Public Health (CDPH) inspects thousands of establishments each year, with a substantial fail rate (over 3,000 failed inspection reports in 2023). To balance the objectives of ensuring adherence to guidelines, minimizing disruption to establishments, and minimizing inspection costs, CDPH assigns each establishment an inspection window every year and guarantees that they will be inspected exactly once during that window. Meanwhile, CDPH also promises surprise public health inspections for unexpected food safety emergencies or complaints. These constraints create a challenge for a…
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Taxonomy
TopicsAdvanced Bandit Algorithms Research · Smart Grid Energy Management · Mobile Crowdsensing and Crowdsourcing
Methodstravel james
