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Improving collective decision accuracy via time-varying cross-inhibition

机译:通过时变交叉抑制提高集体决策的准确性

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We investigate decentralised decision-making, in which a robot swarm is tasked with selecting the best-quality option among a set of alternatives. Individual robots are simplistic as they only perform diffusive search, make local noisy estimates of the options' quality, and exchange information with near neighbours. We propose a decentralised algorithm, inspired by house-hunting honeybees, to efficiently aggregate noisy estimations. Individual robots, by varying over time a single decentralised parameter that modulates the interaction strength, balance exploration and agreement. In this way, the swarm first identifies the options under consideration, then rapidly converges on the best available option, even when outnumbered by lower quality options. We present stochastic analyses and swarm robotics simulations to compare the novel strategy with previous methods and to quantify the performance improvement. The proposed strategy limits the spreading of errors within the population and allows swarms of simple noisy units with minimal communication capabilities to make highly accurate collective decisions in predictable time.
机译:我们研究分散决策,其中机器人群的任务是在一组备选方案中选择最佳质量的方案。单个机器人非常简单,因为它们仅执行扩散搜索,对选项质量进行局部嘈杂的估计,并与附近的邻居交换信息。我们提出了一种分散算法,该算法受寻屋蜜蜂的启发,可以有效地汇总噪声估计。各个机器人可以通过随时间改变单个分散参数来调节交互强度,平衡探索和达成一致。这样,群集首先识别正在考虑的选项,然后迅速收敛到最佳可用选项,即使在被较低质量的选项所淘汰时也是如此。我们目前进行随机分析和群体机器人仿真,以将新策略与以前的方法进行比较,并量化性能改进。所提出的策略限制了错误在人群中的传播,并允许大量具有简单通信功能的简单噪声单元在可预测的时间内做出高度准确的集体决策。

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