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Costs of task allocation with local feedback: Effects of colony size and extra workers in social insects and other multi-agent systems

机译:具有本地反馈的任务分配成本:社区规模和社交昆虫及其他多主体系统中额外工人的影响

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摘要

Adaptive collective systems are common in biology and beyond. Typically, such systems require a task allocation algorithm: a mechanism or rule-set by which individuals select particular roles. Here we study the performance of such task allocation mechanisms measured in terms of the time for individuals to allocate to tasks. We ask: (1) Is task allocation fundamentally difficult, and thus costly? (2) Does the performance of task allocation mechanisms depend on the number of individuals? And (3) what other parameters may affect their efficiency? We use techniques from distributed computing theory to develop a model of a social insect colony, where workers have to be allocated to a set of tasks; however, our model is generalizable to other systems. We show, first, that the ability of workers to quickly assess demand for work in tasks they are not currently engaged in crucially affects whether task allocation is quickly achieved or not. This indicates that in social insect tasks such as thermoregulation, where temperature may provide a global and near instantaneous stimulus to measure the need for cooling, for example, it should be easy to match the number of workers to the need for work. In other tasks, such as nest repair, it may be impossible for workers not directly at the work site to know that this task needs more workers. We argue that this affects whether task allocation mechanisms are under strong selection. Second, we show that colony size does not affect task allocation performance under our assumptions. This implies that when effects of colony size are found, they are not inherent in the process of task allocation itself, but due to processes not modeled here, such as higher variation in task demand for smaller colonies, benefits of specialized workers, or constant overhead costs. Third, we show that the ratio of the number of available workers to the workload crucially affects performance. Thus, workers in excess of those needed to complete all tasks improve task allocation performance. This provides a potential explanation for the phenomenon that social insect colonies commonly contain inactive workers: these may be a ‘surplus’ set of workers that improves colony function by speeding up optimal allocation of workers to tasks. Overall our study shows how limitations at the individual level can affect group level outcomes, and suggests new hypotheses that can be explored empirically.
机译:自适应集体系统在生物学及其他领域很普遍。通常,此类系统需要任务分配算法:个人用来选择特定角色的机制或规则集。在这里,我们研究了根据个人分配给任务的时间来衡量的此类任务分配机制的性能。我们问:(1)任务分配从根本上来说是困难的,因此成本很高吗? (2)任务分配机制的执行是否取决于个人数量? (3)还有哪些其他参数可能会影响其效率?我们使用来自分布式计算理论的技术来开发一个社会昆虫群落的模型,在该模型中,必须将工人分配给一系列任务。但是,我们的模型可以推广到其他系统。首先,我们表明,工人快速评估他们当前未从事的任务对工作的需求的能力会严重影响任务分配是否迅速完成。这表明,在诸如温度调节之类的社交昆虫任务中,温度可能会提供整体的和接近瞬时的刺激来衡量冷却的需求,例如,应该容易地使工人的数量与工作的需求相匹配。在其他任务(例如巢修复)中,可能无法使并非直接在工作现场的工人知道该任务需要更多工人。我们认为这会影响任务分配机制是否处于强烈选择之下。第二,我们证明在我们的假设下,菌落的大小不会影响任务分配的性能。这意味着,当发现菌落大小的影响时,它们并不是任务分配过程本身所固有的,而是由于此处未建模的过程(例如,对较小菌落的任务需求的较大变化,专业工人的收益或固定费用)费用。第三,我们表明可用工人人数与工作量的比率对性能有至关重要的影响。因此,超出完成所有任务所需的工人数量可以改善任务分配性能。这为社会昆虫群落通常包含不活跃的工人这一现象提供了一种可能的解释:这些昆虫可能是“多余”的一组工人,可通过加快对任务的最佳分配来改善群落功能。总体而言,我们的研究表明了个人层面的局限性如何影响小组层面的成果,并提出了可以凭经验探索的新假设。

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