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Ranking nodes in growing networks: When PageRank fails

机译:对不断发展的网络中的节点进行排名:PageRank失败时

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摘要

PageRank is arguably the most popular ranking algorithm which is being applied in real systems ranging from information to biological and infrastructure networks. Despite its outstanding popularity and broad use in different areas of science, the relation between the algorithm’s efficacy and properties of the network on which it acts has not yet been fully understood. We study here PageRank’s performance on a network model supported by real data, and show that realistic temporal effects make PageRank fail in individuating the most valuable nodes for a broad range of model parameters. Results on real data are in qualitative agreement with our model-based findings. This failure of PageRank reveals that the static approach to information filtering is inappropriate for a broad class of growing systems, and suggest that time-dependent algorithms that are based on the temporal linking patterns of these systems are needed to better rank the nodes.
机译:PageRank可以说是最受欢迎的排名算法,已应用于从信息到生物和基础设施网络的实际系统中。尽管该算法在不同科学领域都非常受欢迎并且得到了广泛的应用,但是该算法的功效与它所作用的网络的性能之间的关系还没有被完全理解。我们在这里研究PageRank在实际数据支持的网络模型上的性能,并表明现实的时间效应使PageRank无法针对各种模型参数区分最有价值的节点。真实数据的结果与我们基于模型的发现在质量上一致。 PageRank的失败表明,信息过滤的静态方法不适用于广泛的增长中系统,并且建议基于这些系统的时间链接模式的时间相关算法需要更好地对节点进行排名。

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