Look One Step Ahead: Forward-Looking Incentive Design with Strategic Privacy for Proactive Service Provisioning over Air-Ground Integrated Edge Networks
Sicheng Wu, Minghui Liwang, Yangyang Gao, Deqing Wang, Wenbo Zhu + 3 more
TLDR
LOSA is a forward-looking, privacy-aware incentive framework for proactive service provisioning in air-ground integrated edge networks.
Key contributions
- Introduces LOSA, a novel framework for proactive, privacy-aware service provisioning in AGINs.
- Splits provisioning into a privacy-aware look-ahead phase and a lightweight real-time execution phase.
- Establishes one-step-ahead agreements via a double auction and trajectory similarity clustering.
- Achieves superior privacy, lower transaction latency, and guarantees truthfulness and budget balance.
Why it matters
Current AGIN service provisioning faces privacy concerns and high latency due to dynamic environments and reliance on precise trajectory data. This paper addresses these by offering a robust, privacy-preserving solution. It improves efficiency and coordination for future proactive edge services.
Original Abstract
In air-ground integrated networks (AGINs), unmanned aerial vehicles (UAVs) provide on-demand edge services to ground vehicles. Realizing this vision requires carefully designed incentives to coordinate interactions among self-interested participants. This is exacerbated by the dynamic nature of AGINs, where spatio-temporal variations introduce significant uncertainty in matching UAVs and vehicles. Existing real-time service provisioning typically relies on precise trajectory information, raising privacy concerns and incurring decision latency. To address these challenges, we propose look one-step ahead (LOSA), a novel framework for efficient and privacy-aware service provisioning. By exploiting predictable vehicle travel times between intersections, LOSA decomposes the process into two coupled phases: (i) a privacy-aware look-ahead phase and (ii) a lightweight real-time execution phase. The look-ahead phase allows vehicles to adaptively adjust privacy budgets based on historical utility, balancing trajectory exposure and matching accuracy. Leveraging this, a double auction mechanism establishes binding one-step-ahead agreements (OSAAs) through trajectory similarity clustering, while constructing preference lists to hedge against mobility uncertainty. The execution phase then enforces pre-established OSAAs and preference lists, resolving real-time resource conflicts without costly re-negotiations. This design reduces computational overhead and preserves robustness. We analytically corroborate that LOSA guarantees truthfulness, individual rationality, and budget balance. Experiments on real-world datasets (DAIR-V2X, HighD, and RCooper) demonstrate that LOSA achieves superior privacy protection while lowering transaction latency compared to baseline approaches.
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