Scalable Algorithms for Large and Dynamic Networks: Reducing Big Data for Small Computations

Q1 Engineering
Iraj Saniee
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引用次数: 3

Abstract

In this paper we summarize recent research regarding a novel characterization of large-scale real-life informational networks which can be leveraged to speed computations for network analytics purposes by orders of magnitude. First, using publicly available data, we show that informational networks not only satisfy well-known principles such as the small-world property and variants of the power law degree distribution, but that they also exhibit the geometric property of large-scale negative curvature, also referred to as hyperbolicity. We then provide examples of large-scale physical networks that universally lack this property, thus showing that hyperbolicity is not an ever-present feature of real-life networks in general. We document how hyperbolicity leads to unusually high centrality in informational networks. We then describe an approximation of hyperbolic networks that leverages the observed property of high centrality. We provide evidence that the fidelity of the proposed approximation is not only high for applications such as distance approximation, but that it can speed computation by a factor of 1000X or more. Finally, we discuss two applications of our proposed linear-time distance approximation for informational networks: one for personalized ranking and the other for clustering. These and many more algorithms yet to be developed take full advantage of our proposed tree-approximation of hyperbolic networks and further demonstrate its power and utility.
大型和动态网络的可扩展算法:减少小型计算的大数据
在这篇论文中,我们总结了最近关于大规模现实生活信息网络的一种新表征的研究,该表征可以用于以数量级的速度进行网络分析。首先,利用公开的数据,我们表明信息网络不仅满足众所周知的原理,如小世界性质和幂律度分布的变体,而且它们还表现出大尺度负曲率的几何性质,也称为双曲性。然后,我们提供了普遍缺乏这种性质的大规模物理网络的例子,从而表明夸张性并不是现实生活中网络的一个普遍存在的特征。我们记录了夸张性如何导致信息网络中异常高的中心性。然后,我们描述了双曲网络的近似,它利用了观察到的高中心性特性。我们提供的证据表明,所提出的近似的保真度不仅在距离近似等应用中很高,而且可以将计算速度提高1000倍或更多。最后,我们讨论了我们提出的线性时间-距离近似在信息网络中的两个应用:一个用于个性化排序,另一个用于聚类。这些以及更多有待开发的算法充分利用了我们提出的双曲网络的树近似,并进一步证明了它的强大性和实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Bell Labs Technical Journal
Bell Labs Technical Journal 工程技术-电信学
自引率
0.00%
发文量
0
审稿时长
6-12 weeks
期刊介绍: The Bell Labs Technical Journal (BLTJ) highlights key research and development activities across Alcatel-Lucent — within Bell Labs, within the company’s CTO organizations, and in cross-functional projects and initiatives. It publishes papers and letters by Alcatel-Lucent researchers, scientists, and engineers and co-authors affiliated with universities, government and corporate research labs, and customer companies. Its aim is to promote progress in communications fields worldwide; Bell Labs innovations enable Alcatel-Lucent to deliver leading products, solutions, and services that meet customers’ mission critical needs.
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