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LinkPred: a high performance library for link prediction in complex networks

机译:LinkPRED:复杂网络中的链路预测的高性能库

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The problem of determining the likelihood of the existence of a link between two nodes in a network is called link prediction. This is made possible thanks to the existence of a topological structure in most real-life networks. In other words, the topologies of networked systems such as the World Wide Web, the Internet, metabolic networks, and human society are far from random, which implies that partial observations of these networks can be used to infer information about undiscovered interactions. Significant research efforts have been invested into the development of link prediction algorithms, and some researchers have made the implementation of their methods available to the research community. These implementations, however, are often written in different languages and use different modalities of interaction with the user, which hinders their effective use. This paper introduces LinkPred, a high-performance parallel and distributed link prediction library that includes the implementation of the major link prediction algorithms available in the literature. The library can handle networks with up to millions of nodes and edges and offers a unified interface that facilitates the use and comparison of link prediction algorithms by researchers as well as practitioners.
机译:确定网络中两个节点之间存在链路存在的可能性的问题称为链路预测。由于大多数现实生活网络中的拓扑结构存在,这是可能的。换句话说,诸如万维网,互联网,代谢网络和人类社会的网络系统的拓扑远离随机,这意味着这些网络的部分观察可用于推断有关未被发现的交互的信息。已经投入了显着的研究努力,进入了链路预测算法的发展,一些研究人员已经向研究界提供了他们的方法。然而,这些实现通常用不同的语言编写,并使用与用户的不同互动模式,这会阻碍其有效的使用。本文介绍了Linkpred,一个高性能并行和分布式链路预测库,包括在文献中提供的主要链路预测算法。该库可以处理最多数百万节点和边的网络,并提供统一的接口,该界面促进了研究人员以及从业者的链路预测算法的使用和比较。

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