论文标题

多层网络中的顺序播种

Sequential seeding in multilayer networks

论文作者

Bródka, Piotr, Jankowski, Jarosław, Michalski, Radosław

论文摘要

多层网络是多个现实世界系统的基础结构,在该系统中,我们在节点之间有多种类型的互动/关系:社交,生物学,计算机或通信,仅举几例。在许多情况下,它们有助于建模发生在它们上面的过程,从而导致对这些现象有更多的了解。这种过程的一个例子是影响的传播。在这里,社会体系的成员通过相互联系,分享观点或思想,或 - 明确地通过说服来传播影响。由于这一过程的重要性,研究人员研究了应选择社交网络的哪些成员作为影响力的发起人,以最大程度地发挥影响。在这项工作中,我们遵循此方向,开发和评估多层网络的顺序播种技术。到目前为止,仅使用简单的一层网络对此类技术进行评估。结果表明,多层网络中的顺序种子通过增加覆盖范围并允许节省播种预算来优于传统方法。但是,它还扩展了扩展过程的持续时间。

Multilayer networks are the underlying structures of multiple real-world systems where we have more than one type of interaction/relation between nodes: social, biological, computer, or communication, to name only a few. In many cases, they are helpful in modelling processes that happen on top of them, which leads to gaining more knowledge about these phenomena. One example of such a process is the spread of influence. Here, the members of a social system spread the influence across the network by contacting each other, sharing opinions or ideas, or - explicitly - by persuasion. Due to the importance of this process, researchers investigate which members of a social network should be chosen as initiators of influence spread to maximise the effect. In this work, we follow this direction, develop and evaluate the sequential seeding technique for multilayer networks. Until now, such techniques were evaluated only using simple one layer networks. The results show that sequential seeding in multilayer networks outperforms the traditional approach by increasing the coverage and allowing to save the seeding budget. However, it also extends the duration of the spreading process.

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