复杂多路网络中一种有效的链路预测方法

Shikhar Sharma, Anurag Singh
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引用次数: 17

摘要

各种各样的人工和自然系统可以抽象成一组相互作用的实体。这样的抽象可以很好地表示系统的潜在动态,当建模为由边耦合的顶点网络时。基于拓扑属性或依赖关系的结构动力学预测是一项重要任务。这种复杂网络中的链路预测在几乎所有类型的网络中都被认为是有用的,因为它可以用来提取缺失信息,识别虚假交互和评估网络演化机制。利用各种基于相似度和似然度的指标来推断不同的拓扑信息和基于关系的信息,形成链路预测算法。然而,这些算法在领域中过于具体,并且/或者没有封装现实世界信息的一般性质。在大多数自然和工程系统中,实体与多种类型的关联和关系联系在一起,这些关联和关系在网络的动态中起着重要作用。这就形成了一个多子系统或多层的网络化信息。这些网络被认为是多路网络。这项工作提出了一种在多路网络上进行链路预测的方法,其中从多层网络中学习链路预测目的的关联。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Efficient Method for Link Prediction in Complex Multiplex Networks
A great variety of artificial and natural systems can be abstracted into a set of entities interacting with each other. Such abstractions can very well represent the underlying dynamics of the system when modeled as network of vertices coupled by edges. Prediction of dynamics in these structures based on topological attribute or dependency relations is an important task. Link Prediction in such complex networks is regarded useful in almost all type of networks as it can be used to extract missing information, identify spurious interactions and evaluate network evolving mechanisms. Various similarity and likelihood based indices have been employed to infer different topological and relation based information to form a link prediction algorithm. These algorithms however are too specific in domain and/or do not encapsulate the generic nature of the real world information. In most natural and engineered systems, the entities are linked with multiple type of associations and relations which play a factor in the dynamics of the network. This forms a multiple subsystem or a multiple layer of networked information. These networks are regarded as Multiplex Networks. This work presents an approach for link prediction on Multiplex Networks where the associations are learned from the multiple layer of networks for link prediction purposes.
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