Allocation Problems in Ride-Sharing Platforms: Online Matching With Offline Reusable Resources
Dickerson, John P. (University of Maryland College Park) | Sankararaman, Karthik A. (University of Maryland College Park) | Srinivasan, Aravind (University of Maryland College Park) | Xu, Pan (University of Maryland College Park)
Bipartite matching markets pair agents on one side of a market with agents, items, or contracts on the opposing side. Prior work addresses online bipartite matching markets, where agents arrive over time and are dynamically matched to a known set of disposable resources. In this paper, we propose a new model, Online Matching with (offline) Reusable Resources under Known Adversarial Distributions (OM-RR-KAD), in which resources on the offline side are reusable instead of disposable; that is, once matched, resources become available again at some point in the future. We show that our model is tractable by presenting an LP-based adaptive algorithm that achieves an online competitive ratio of 1/2 − ε for any given ε > 0. We also show that no non-adaptive algorithm can achieve a ratio of 1/2 + o(1) based on the same benchmark LP. Through a data-driven analysis on a massive openly-available dataset, we show our model is robust enough to capture the application of taxi dispatching services and ride-sharing systems. We also present heuristics that perform well in practice.
Feb-8-2018
- Country:
- North America > United States
- Maryland > Prince George's County
- College Park (0.05)
- New York (0.04)
- Maryland > Prince George's County
- North America > United States
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