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Identifying familiar strangers in human encounter networks

机译:在人类遭遇网络中识别熟悉的陌生人

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摘要

Familiar strangers, pairs of individuals who encounter repeatedly but never know each other, have been discovered for four decades yet lack an effective method to identify. Here we propose a novel method called familiar stranger classifier (FSC) to identify familiar strangers from three empirical datasets, and classify human relationships into four types, i.e., familiar stranger (FS), in-role (IR), friend (F) and stranger (S). The analyses of the human encounter networks show that the average number of FS one may encounter is finite but larger than the Dunbar Number, and their encounters are structurally more stable and denser than those of S, indicating the encounters of FS are not limited by the social capacity, and more robust than the random scenario. Moreover, the temporal statistics of encounters between FS over the whole time span show strong periodicity, which are diverse from the bursts of encounters within one day, suggesting the significance of longitudinal patterns of human encounters. The proposed method to identify FS in this paper provides a valid framework to understand human encounter patterns and analyse complex human social behaviors. Copyright (C) EPLA, 2016.
机译:熟悉的陌生人,一对遇到的人一对,但从未见过对方,已经发现了四十年,但缺乏有效的方法来识别。在这里,我们提出了一种名为熟悉的陌生人分类器(FSC)的新方法来识别来自三个经验数据集的熟悉的陌生人,并将人际关系分为四种类型,即熟悉的陌生人(FS),角色(IR),朋友(F)和陌生人。人类遭遇网络的分析表明,可以遇到的FS的平均数是有限但大于DUNBAR数,并且它们的遭遇比S的结构更稳定,并且指示FS的遭遇不受限制社会能力,比随机场景更强大。此外,在整个时间跨度之间的FS之间的遇到的时间统计显示出强烈的周期性,这在一天内从遇到的遇到突发是多样的,这表明人类遭遇的纵向模式的重要性。本文识别FS的建议方法提供了一个有效的框架,以了解人类遭遇模式并分析复杂的人类社会行为。版权所有(c)epla,2016。

著录项

  • 来源
    《EPL》 |2016年第2期|共7页
  • 作者单位

    Fudan Univ Adapt Networks &

    Control Lab Shanghai 200433 Peoples R China;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 物理学;
  • 关键词

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