SYSYMar 23

Towards Fair and Efficient allocation of Mobility-on-Demand resources through a Karma Economy

arXiv:2511.0722519.51 citationsh-index: 8
Predicted impact top 66% in SY · last 90 daysOriginality Incremental advance
AI Analysis

This work addresses fairness and efficiency issues in urban transportation for users, but it is incremental as it builds on classical Karma economies with a proof-of-concept simulation.

The paper tackles the problem of socio-economic inequalities in mobility-on-demand systems by introducing a non-monetary Karma-based mechanism that models user urgency, showing promising behavior in system efficiency and equitable resource allocation in a simulated scenario.

Mobility-on-demand systems like ride-hailing have transformed urban transportation, but they have also exacerbated socio-economic inequalities in access to these services, also due to surge pricing strategies. Although several fairness-aware frameworks have been proposed in smart mobility, they often overlook the temporal and situational variability of user urgency that shapes real-world transportation demands. This paper introduces a non-monetary, Karma-based mechanism that models endogenous urgency, allowing user time-sensitivity to evolve in response to system conditions as well as external factors. We develop a theoretical framework maintaining the efficiency and fairness guarantees of classical Karma economies, while accommodating this realistic user behavior modeling. Applied to a simplified simulated mobility-on-demand scenario, we provide a proof-of-concept illustration of the proposed framework, showing that it exhibits promising behavior in terms of system efficiency and equitable resource allocation, while acknowledging that a full treatment of realistic MoD complexity remains an important direction for future work.

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