论文标题
网络上的分层团队结构和多维本地化(或孤岛)
Hierarchical team structure and multidimensional localization (or siloing) on networks
论文作者
论文摘要
当组织相互作用网络的结构特性限制信息的扩散时,知识筒仓就会出现。众所周知,这些结构性障碍会以不同的规模采取多种形式 - 稀疏组织,大型团队或全球核心围栏结构中的枢纽 - 但我们对这些不同结构的相互作用的相互作用缺乏了解。在这里,我们弥合了有关扩散动力学本地化的数学文献与组织互动网络中知识筒仓的更应用的文献之间的差距。 To do so, we introduce a new model that considers a layered structure of teams to unveil a new form of hierarchical localization (i.e., the localization of information at the top or center of an organization) and study its interplay with known phenomena of mesoscopic localization (i.e., the localization of information in large groups), $k$-core localization (i.e., around denser $k$-cores) and hub localization (即,围绕高级星星)。我们还通过考虑一般感染内核来包括一个复杂的传染机制,该内核可以取决于等级水平(影响力),程度(受欢迎程度),感染性邻居(社会增强)或团队规模(重要性)。该通用模型使我们能够研究复杂组织互动网络中信息散型的多方面现象,并为新的优化问题打开了大门,以促进或阻碍不同本地化制度的出现。
Knowledge silos emerge when structural properties of organizational interaction networks limit the diffusion of information. These structural barriers are known to take many forms at different scales - hubs in otherwise sparse organisations, large dense teams, or global core-periphery structure - but we lack an understanding of how these different structures interact. Here we bridge the gap between the mathematical literature on localization of spreading dynamics and the more applied literature on knowledge silos in organizational interaction networks. To do so, we introduce a new model that considers a layered structure of teams to unveil a new form of hierarchical localization (i.e., the localization of information at the top or center of an organization) and study its interplay with known phenomena of mesoscopic localization (i.e., the localization of information in large groups), $k$-core localization (i.e., around denser $k$-cores) and hub localization (i.e., around high degree stars). We also include a complex contagion mechanism by considering a general infection kernel which can depend on hierarchical level (influence), degree (popularity), infectious neighbors (social reinforcement) or team size (importance). This general model allows us to study the multifaceted phenomenon of information siloing in complex organizational interaction networks and opens the door to new optimization problems to promote or hinder the emergence of different localization regimes.