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Manifold learning and maximum likelihood estimation for hyperbolic network embedding

机译:双曲网络嵌入的流形学习和最大似然估计

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摘要

The Popularity-Similarity (PS) model sustains that clustering and hierarchy, properties common to most networks representing complex systems, are the result of an optimisation process in which nodes seek to form ties, not only with the most connected (popular) system components, but also with those that are similar to them. This model has a geometric interpretation in hyperbolic space, where distances between nodes abstract popularity-similarity trade-offs and the formation of scale-free and strongly clustered networks can be accurately described.Current methods for mapping networks to hyperbolic space are based on maximum likelihood estimations or manifold learning. The former approach is very accurate but slow; the latter improves efficiency at the cost of accuracy. Here, we analyse the strengths and limitations of both strategies and assess the advantages of combining them to efficiently embed big networks, allowing for their examination from a geometric perspective. Our evaluations in artificial and real networks support the idea that hyperbolic distance constraints play a significant role in the formation of edges between nodes. This means that challenging problems in network science, like link prediction or community detection, could be more easily addressed under this geometric framework.Electronic supplementary materialThe online version of this article (doi:10.1007/s41109-016-0013-0) contains supplementary material, which is available to authorized users.
机译:流行度相似性(PS)模型坚持认为,群集和层次结构(代表复杂系统的大多数网络所共有的属性)是优化过程的结果,在优化过程中,节点不仅要与关系最密切的(受欢迎的)系统组件建立联系,但也有类似的东西。该模型在双曲空间中具有几何学解释,其中节点之间的距离可以抽象地描述流行度-相似性之间的取舍,并且可以准确地描述无标度和强聚类网络的形成。将网络映射到双曲空间的当前方法基于最大似然估计或多种学习。前一种方法非常准确,但是很慢。后者以准确性为代价提高了效率。在这里,我们分析了这两种策略的优势和局限性,并评估了将它们组合以有效嵌入大型网络的优势,并从几何角度对其进行了研究。我们在人工和真实网络中的评估支持以下观点:双曲距离约束在节点之间边缘的形成中起着重要作用。这意味着在此几何框架下可以更轻松地解决网络科学中的难题,例如链接预测或社区检测。电子补充材料本文的在线版本(doi:10.1007 / s41109-016-0013-0)包含补充材料,可供授权用户使用。

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