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Scaling-Laws of Human Broadcast Communication Enable Distinction between Human Corporate and Robot Twitter Users

机译:人类广播通信的按比例缩放规则使人类企业和机器人Twitter用户之间的区别得以实现

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摘要

Human behaviour is highly individual by nature, yet statistical structures are emerging which seem to govern the actions of human beings collectively. Here we search for universal statistical laws dictating the timing of human actions in communication decisions. We focus on the distribution of the time interval between messages in human broadcast communication, as documented in Twitter, and study a collection of over 160,000 tweets for three user categories: personal (controlled by one person), managed (typically PR agency controlled) and bot-controlled (automated system). To test our hypothesis, we investigate whether it is possible to differentiate between user types based on tweet timing behaviour, independently of the content in messages. For this purpose, we developed a system to process a large amount of tweets for reality mining and implemented two simple probabilistic inference algorithms: 1. a naive Bayes classifier, which distinguishes between two and three account categories with classification performance of 84.6% and 75.8%, respectively and 2. a prediction algorithm to estimate the time of a user's next tweet with an . Our results show that we can reliably distinguish between the three user categories as well as predict the distribution of a user's inter-message time with reasonable accuracy. More importantly, we identify a characteristic power-law decrease in the tail of inter-message time distribution by human users which is different from that obtained for managed and automated accounts. This result is evidence of a universal law that permeates the timing of human decisions in broadcast communication and extends the findings of several previous studies of peer-to-peer communication.
机译:人类的行为本质上是高度个体化的,但统计结构正在出现,似乎可以共同支配人类的行为。在这里,我们搜索通用的统计定律,这些定律规定了人类在交流决策中的时机。我们关注Twitter上记录的人类广播通信中消息之间的时间间隔分布,并研究了针对三种用户类别的超过160,000条推文的集合:个人(由一个人控制),受管(通常由PR机构控制)和机器人控制(自动化系统)。为了检验我们的假设,我们调查是否有可能根据推文计时行为来区分用户类型,而与消息中的内容无关。为此,我们开发了一个处理大量推文以进行现实挖掘的系统,并实现了两种简单的概率推理算法:1.天真的贝叶斯分类器,可区分两个和三个帐户类别,分类性能分别为84.6%和75.8% ,和2.预测算法,用估算用户下一条推文的时间。我们的结果表明,我们可以可靠地区分这三个用户类别,并以合理的准确性预测用户的消息间时间的分布。更重要的是,我们确定了人类用户在消息间时间分配的尾部出现的特征幂律下降,这与从托管帐户和自动帐户获得的幂律下降不同。这一结果证明了普遍规律的证据,该规律渗透了人类在广播通信中做出决定的时机,并扩展了先前对等通信研究的发现。

著录项

  • 期刊名称 other
  • 作者

    Gabriela Tavares; Aldo Faisal;

  • 作者单位
  • 年(卷),期 -1(8),7
  • 年度 -1
  • 页码 e65774
  • 总页数 11
  • 原文格式 PDF
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  • 入库时间 2022-08-21 11:21:38

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