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Two-hop walks indicate PageRank order

机译:双跳走动表示PageRank订单

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摘要

This paper shows that pairwise PageRank orders emerge from two-hop walks. The main tool used here refers to a specially designed sign-mirror function and a parameter curve, whose low-order derivative information implies pairwise PageRank orders with high probability. We study the pairwise correct rate by placing the Google matrix G in a probabilistic framework, where G may be equipped with different random ensembles for model-generated or real-world networks with sparse, small-world, scale-free features, the proof of which is mixed by mathematical and numerical evidence. We believe that the underlying spectral distribution of aforementioned networks is responsible for the high pairwise correct rate. Moreover, the perspective of this paper naturally leads to an O(1) algorithm for any single pairwise PageRank comparison if assuming both A = G - I-n where I-n denotes the identity matrix of order n, and A(2) are ready on hand (e.g., constructed offline in an incremental manner), based on which it is easy to extract the top k list in O(kn), thus making it possible for PageRank algorithm to deal with super large-scale datasets in real time. (C) 2019 Elsevier Ltd. All rights reserved.
机译:本文表明,成对PageRank订单从两跳走动中出现。这里使用的主要工具是指专门设计的签名镜像功能和参数曲线,其低位数的衍生信息意味着具有高概率的成对PageRank命令。我们通过将Google Matrix G放置在概率框架中来研究成对正确​​的速率,其中G可以配备不同随机组合的模型生成或现实世界网络,其具有稀疏,小世界,无垢功能,证明由数学和数值证据混合。我们认为上述网络的潜在光谱分布负责高对正确的速率。此外,本文的透视图自然地导致任何单个成对PageRank比较的O(1)算法,如果假设a = g - 所在的位置,则表示顺序N的标识矩阵n,并且在手头上准备好(例如,以增量方式脱机(以增量方式构造),基于其容易提取O(kN)中的顶部K列表,从而使PageRank算法能够实时处理超大大规模数据集。 (c)2019年elestvier有限公司保留所有权利。

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