English

Regime-Calibrated Fleet Repositioning with a Spatial Queue-Regret Decomposition

Machine Learning 2026-05-12 v2 Artificial Intelligence Systems and Control Systems and Control Machine Learning

Abstract

Ride-hailing and autonomous mobility-on-demand operators reposition idle supply before future demand is fully observed. We study a retrieval-calibrated predict-then-optimize approach for this problem: historical demand regimes are matched to the current query block, combined into a calibrated demand prior, and passed to a fleet-balancing controller. The paper makes three contributions. First, we train a leakage-safe similarity gate whose objective penalizes demand error, pickup spatial mismatch, and queue shortage risk rather than retrieval rank alone. Second, we develop a spatial queue-regret decomposition for a stable queueing surrogate, linking demand-field error to wait through queueing sensitivity, allocator sensitivity, and Wasserstein pickup mismatch. Third, we evaluate learned retrieval and external-style rebalancing baselines in a common simulator. In the calibrated-demand gate experiment, across eight New York City scenarios and ten seeds, the spatial gate reduces mean wait to 82.3s, compared with 85.3s for hand-tuned similarity and 85.8s for a distributional-only baseline. In a separate replay-demand controller comparison, a scenario chance-MPC analog and a share-target transportation LP improve on Wen-style rebalancing (92.2s/92.2s vs. 100.1s), a reduced GPR chance-MPC comparator is intermediate at 94.4s, and an oracle MPC diagnostic is 91.3s.

Keywords

Cite

@article{arxiv.2604.03883,
  title  = {Regime-Calibrated Fleet Repositioning with a Spatial Queue-Regret Decomposition},
  author = {Indar Kumar and Akanksha Tiwari},
  journal= {arXiv preprint arXiv:2604.03883},
  year   = {2026}
}

Comments

13 pages, 4 figures, 8 tables. Code: https://github.com/IndarKarhana/regime-calibrated-dispatch

R2 v1 2026-07-01T11:54:06.942Z