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Action dependencies in privacy-preserving multi-agent planning

机译:隐私保护多主体规划中的动作依存关系

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Collaborative privacy-preserving planning (CPPP) is a multi-agent planning task in which agents need to achieve a common set of goals without revealing certain private information. In many CPPP algorithms, the individual agents reason about a projection of the multi-agent problem onto a single-agent classical planning problem. For example, an agent can plan as if it controls the public actions of other agents, ignoring any private preconditions and effects theses actions may have, and use the cost of this plan as a heuristic estimate of the cost of the full, multi-agent plan. Using such a projection, however, ignores some dependencies between agents' public actions. In particular, it does not contain dependencies between public actions of other agents caused by their private facts. We propose a projection in which these private dependencies are maintained. The benefit of our dependency-preserving projection is demonstrated by using it to produce high-level plans in a new privacy-preserving planner, and as a heuristic for guiding forward search privacy-preserving algorithms. Both are able to solve more benchmark problems than any other state-of-the-art privacy-preserving planner. This more informed projection does not explicitly expose any private fact, action, or precondition. In addition, we show that even if an adversary agent knows that an agent has some private objects of a given type (e.g., trucks), it cannot infer the number of such private objects that the agent controls. This introduces a novel form of strong privacy, which we call object-cardinality privacy, that is motivated by real-world requirements.
机译:协作性隐私保护计划(CPPP)是一个多代理程序计划任务,其中,代理程序需要实现一组通用目标,而又不会泄露某些私人信息。在许多CPPP算法中,单个主体会把多主体问题投射到单主体经典计划问题上。例如,一个业务代表可以像控制其他业务代表的公共行动一样进行计划,而忽略这些行动可能具有的任何私人先决条件和影响,并使用该计划的成本作为对整个多业务代表成本的启发式估算计划。但是,使用这种预测会忽略代理程序的公共操作之间的某些依赖性。特别是,它不包含其他代理因其私人事实引起的公共行为之间的依赖性。我们提出了一个预测,其中将维护这些私有依赖项。通过在新的隐私保护计划程序中使用它来生成高级计划,并作为指导向前搜索隐私保护算法的启发式方法,可以证明我们的依赖关系保留计划的好处。与其他任何最新的隐私保护计划者相比,两者都能解决更多基准问题。这种更有根据的预测并没有明确揭示任何私人事实,行动或先决条件。另外,我们表明,即使对手代理知道代理具有某些给定类型的私有对象(例如卡车),也无法推断出该代理控制的私有对象的数量。这引入了一种新形式的强保密性,我们将其称为对象基数保密性,这是由现实世界的需求所激发的。

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