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Distributed Submodular Maximization on Partition Matroids for Planning on Large Sensor Networks

机译:用于大型传感器网络规划的分区拟阵上的分布式次模最大化

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Many problems that are relevant to sensor networks such as active sensing and coverage planning have objectives that exhibit diminishing returns and specifically are submodular. When each agent selects an action local space of actions, sequential maximization techniques for submodular function maximization obtain solutions within half of optimal even though such problems are often NP-Hard. However, adapting methods for submodular function maximization to distributed computation on sensor networks is challenging as sequential execution of planning steps is time-consuming and inefficient. Further, prior works have found that planners suffer severely impaired worst-case performance whenever large numbers of agents plan in parallel. This work develops new tools for analysis of submodular maximization problems which we apply to design of randomized distributed planners that provide constant-factor suboptimality approaching that of standard sequential planners. These bounds apply when the objective satisfies a higher-order monotonicity condition and when cumulative interactions between agents are proportional to the optimal objective value. Problems including generalizations of sensor coverage satisfy these conditions when agents have spatially local sensing actions and limited sensor range. We present simulation results for two such cases.
机译:与传感器网络相关的许多问题,如主动感测和覆盖计划的目标具有表现出递减递减的目标,并且具体是子模子。当每个代理选择动作局部动作时,即使这些问题通常是NP-HARD,即使这种问题通常是NP-HARD,序列函数最大化的顺序最大化技术也可以在最佳的一半内获得解决方案。然而,对传感器网络上分布式计算的子模块函数最大化的调整方法具有挑战性,因为规划步骤的顺序执行是耗时和效率的。此外,每当大量的代理计划平行计划时,策划人员发现规划者遭受严重受损的最坏情况。这项工作开发了用于分析子膜上最大化问题的新工具,我们适用于随机分布式规划人员提供提供恒因因子次优,接近标准顺序规划者的持续因子。当物目标满足高阶单调性条件以及当代理之间的累积相互作用与最佳目标值成比例时,这些界限适用。当试剂具有空间局部感测动作和有限的传感器范围时,包括传感器覆盖的概括的问题满足这些条件。我们为两个这样的病例提出了模拟结果。

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