量化网络结构对集体决策速度和准确性的影响。

IF 1.3 4区 生物学 Q3 BIOLOGY
Theory in Biosciences Pub Date : 2021-11-01 Epub Date: 2021-02-26 DOI:10.1007/s12064-020-00335-1
Bryan C Daniels, Pawel Romanczuk
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引用次数: 7

摘要

从神经元到蚂蚁再到鱼,二元决策是最简单的集体计算形式之一。在这个过程中,个体收集到的关于不确定环境的信息被积累起来,以指导总体尺度上的行为。我们研究了响应小信噪比输入的网络中的二元决策动力学,寻找在该任务中控制性能的集体的定量度量。我们发现决策精度与集体动力学的速度直接相关,而集体动力学的速度又受三个因素的控制:网络邻接矩阵的首特征值、相应特征向量的参与比率和与相应对称破缺分岔的距离。在这种分岔附近的最大可达到的时间尺度的新近似值使我们能够预测仅基于其频谱特性的大型网络中的决策性能尺度。具体而言,我们探讨了由“富裕俱乐部”拓扑结构的等级分类结构引起的本地化影响。这让我们深入了解在执行集体计算的活网络中发现的高阶结构所涉及的权衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Quantifying the impact of network structure on speed and accuracy in collective decision-making.

Found in varied contexts from neurons to ants to fish, binary decision-making is one of the simplest forms of collective computation. In this process, information collected by individuals about an uncertain environment is accumulated to guide behavior at the aggregate scale. We study binary decision-making dynamics in networks responding to inputs with small signal-to-noise ratios, looking for quantitative measures of collectivity that control performance in this task. We find that decision accuracy is directly correlated with the speed of collective dynamics, which is in turn controlled by three factors: the leading eigenvalue of the network adjacency matrix, the corresponding eigenvector's participation ratio, and distance from the corresponding symmetry-breaking bifurcation. A novel approximation of the maximal attainable timescale near such a bifurcation allows us to predict how decision-making performance scales in large networks based solely on their spectral properties. Specifically, we explore the effects of localization caused by the hierarchical assortative structure of a "rich club" topology. This gives insight into the trade-offs involved in the higher-order structure found in living networks performing collective computations.

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来源期刊
Theory in Biosciences
Theory in Biosciences 生物-生物学
CiteScore
2.70
自引率
9.10%
发文量
21
审稿时长
3 months
期刊介绍: Theory in Biosciences focuses on new concepts in theoretical biology. It also includes analytical and modelling approaches as well as philosophical and historical issues. Central topics are: Artificial Life; Bioinformatics with a focus on novel methods, phenomena, and interpretations; Bioinspired Modeling; Complexity, Robustness, and Resilience; Embodied Cognition; Evolutionary Biology; Evo-Devo; Game Theoretic Modeling; Genetics; History of Biology; Language Evolution; Mathematical Biology; Origin of Life; Philosophy of Biology; Population Biology; Systems Biology; Theoretical Ecology; Theoretical Molecular Biology; Theoretical Neuroscience & Cognition.
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