论文标题
通信网络中互惠的时间模式
Temporal patterns of reciprocity in communication networks
论文作者
论文摘要
人类交流,集体社会现象的本质,从小规模组织到全球在线平台,具有成员之间的强烈相互互动,以实现社交网络中的稳定,凝聚力和合作。尽管在汇总的通信数据中众所周知,高水平的互惠性,但相互信息交流的时间模式受到了较少的关注。在这里,我们根据交互的时间顺序提出互惠量度,并在来自多个通信渠道的数据中探索它们,包括呼叫,消息传递和社交媒体。通过将每个通道分为互惠和非重点的时间网络,我们发现持续的趋势表明,一对一交换与信息广播的不同作用。我们实施了几种无效的通信活动模型,这些模型可以识别内存,更高的趋势与过去的联系人重复相互作用,这是互惠的关键来源。当将存储器添加到活动驱动的,随时间变化的网络的模型时,我们将重现经验数据中看到的互惠水平。我们的工作增加了对人类交流系统中互惠的出现的理论理解,暗示了社会交流和大规模合作中规范的形成背后的机制。
Human communication, the essence of collective social phenomena ranging from small-scale organizations to worldwide online platforms, features intense reciprocal interactions between members in order to achieve stability, cohesion, and cooperation in social networks. While high levels of reciprocity are well known in aggregated communication data, temporal patterns of reciprocal information exchange have received far less attention. Here we propose measures of reciprocity based on the time ordering of interactions and explore them in data from multiple communication channels, including calls, messaging and social media. By separating each channel into reciprocal and non-reciprocal temporal networks, we find persistent trends that point to the distinct roles of one-on-one exchange versus information broadcast. We implement several null models of communication activity, which identify memory, a higher tendency to repeat interactions with past contacts, as a key source of reciprocity. When adding memory to a model of activity-driven, time-varying networks, we reproduce the levels of reciprocity seen in empirical data. Our work adds to the theoretical understanding of the emergence of reciprocity in human communication systems, hinting at the mechanisms behind the formation of norms in social exchange and large-scale cooperation.