Planning is one of the main approaches used to improve agents' working efficiency by making plans beforehand. However, during planning, agents face the risk of having their private information leaked. This paper proposes a novel strong privacy-preserving planning approach for logistic-like problems. This approach outperforms existing approaches by addressing two challenges: 1) simultaneously achieving strong privacy, completeness and efficiency, and 2) addressing communication constraints. These two challenges are prevalent in many real-world applications including logistics in military environments and packet routing in networks. To tackle these two challenges, our approach adopts the differential privacy technique, which can both guarantee strong privacy and control communication overhead. To the best of our knowledge, this paper is the first to apply differential privacy to the field of multi-agent planning as a means of preserving the privacy of agents for logistic-like problems. We theoretically prove the strong privacy and completeness of our approach and empirically demonstrate its efficiency. We also theoretically analyze the communication overhead of our approach and illustrate how differential privacy can be used to control it.
翻译:规划是通过事先制定计划来提高代理商工作效率的主要方法之一。然而,在规划期间,代理商面临私人信息泄露的风险。本文件建议对后勤问题采取新的强有力的隐私保护规划方法。这种方法通过应对两个挑战,优于现有方法:(1) 同时实现强大的隐私、完整性和效率,(2) 解决通信限制。这两个挑战在许多现实世界应用中十分普遍,包括在军事环境中的物流和网络的组合路径中。为了应对这两个挑战,我们的方法采用了差异隐私技术,既能保证强大的隐私,又能控制通信管理费用。据我们所知,本文件首先将差异隐私应用于多代理商规划领域,作为保护物流问题代理商隐私的一种手段。我们理论上证明我们的方法具有很强的隐私和完整性,并从经验上证明了其效率。我们还从理论上分析了我们方法的通信管理费,并说明了如何使用差异隐私来控制它。