加权网络中的链路预测

D. Wind, Morten Mørup
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引用次数: 18

摘要

许多复杂网络的特征都与权值信息有关。一些模型利用这些信息,而另一些模型在推断结构时忽略权重信息。本文研究了在对真实网络建模时,边权是否携带了网络结构的重要信息。我们比较了五个突出的模型,通过它们在存在和不存在权重信息的情况下预测链接的能力。此外,我们量化了模型解释边权信息的能力。我们发现,当任务是推断边缘的存在时,复杂模型通常优于简单模型,但简单模型在推断实际权重方面表现更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Link prediction in weighted networks
Many complex networks feature relations with weight information. Some models utilize this information while other ignore the weight information when inferring the structure. In this paper we investigate if edge-weights when modeling real networks, carry important information about the network structure. We compare five prominent models by their ability to predict links both in the presence and absence of weight information. In addition we quantify the models ability to account for the edge-weight information. We find that the complex models generally outperform simpler models when the task is to infer presence of edges, but that simpler models are better at inferring the actual weights.
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