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Origins of power-law degree distribution in the heterogeneity of human activity in social networks

机译:社会网络中人类活动异质性中幂律度分布的起源

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The probability distribution of number of ties of an individual in a social network follows a scale-free power-law. However, how this distribution arises has not been conclusively demonstrated in direct analyses of people's actions in social networks. Here, we perform a causal inference analysis and find an underlying cause for this phenomenon. Our analysis indicates that heavy-tailed degree distribution is causally determined by similarly skewed distribution of human activity. Specifically, the degree of an individual is entirely random - following a “maximum entropy attachment” model - except for its mean value which depends deterministically on the volume of the users' activity. This relation cannot be explained by interactive models, like preferential attachment, since the observed actions are not likely to be caused by interactions with other people.
机译:社交网络中个人联系数量的概率分布遵循无标度幂律。但是,这种分布的产生方式尚未在对社交网络中人们的行为的直接分析中得出结论。在这里,我们进行因果推断分析,并找到导致这种现象的根本原因。我们的分析表明,重尾度分布是由人类活动的类似偏斜分布决定的。具体来说,一个人的程度完全是随机的-遵循“最大熵依恋”模型-除了其平均值取决于确定的用户活动量外,其平均值是随机的。由于观察到的动作不太可能是由与其他人的交互作用引起的,因此无法通过交互模型来解释这种关系,例如优先依恋。

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