In cooperative Multi-Agent Planning (MAP), a set of goals has to be achieved by a set of agents. Independently of whether they perform a pre-assignment of goals to agents or they directly search for a solution without any goal assignment, most previous works did not focus on a fair distribution/achievement of goals by agents. This paper adapts well-known fairness schemes to MAP, and introduces two novel approaches to generate cost-aware fair plans. The first one solves an optimization problem to pre-assign goals to agents, and then solves a centralized MAP task using that assignment. The second one consists of a planning-based compilation that allows solving the joint problem of goal assignment and planning while taking into account the given fairness scheme. Empirical results in several standard MAP benchmarks show that these approaches outperform different baselines. They also show that there is no need to sacrifice much plan cost to generate fair plans.
翻译:在多机构合作规划(MAP)中,一组目标必须由一组代理人来实现。不管它们是向代理人预先分配目标,还是直接寻找没有指定目标的解决办法,大多数以前的工作并不侧重于代理人公平分配/实现目标。本文将众所周知的公平方案与MAP相适应,引入了两种新颖的方法来产生成本意识公平计划。第一个方案解决了预先向代理人分配目标的优化问题,然后用该任务解决了中央化的MAP任务。第二个方案是一个基于规划的汇编,它既能解决目标分配和规划的共同问题,又考虑到给定的公平方案。几个标准MAP基准的实证结果显示,这些方法超越了不同的基线。它们还表明,没有必要为产生公平计划而牺牲很多计划费用。