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Efficient Node Proximity and Node Significance Computations in Graphs

机译:图中的有效节点接近度和节点重要性计算

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摘要

Node proximity measures are commonly used for quantifying how nearby or otherwise related to two or more nodes in a graph are. Node significance measures are mainly used to find how much nodes are important in a graph. The measures of node proximity/significance have been highly effective in many predictions and applications. Despite their effectiveness, however, there are various shortcomings. One such shortcoming is a scalability problem due to their high computation costs on large size graphs and another problem on the measures is low accuracy when the significance of node and its degree in the graph are not related. The other problem is that their effectiveness is less when information for a graph is uncertain. For an uncertain graph, they require exponential computation costs to calculate ranking scores with considering all possible worlds.;In this thesis, I first introduce Locality-sensitive, Re-use promoting, approximate Personalized PageRank (LR-PPR) which is an approximate personalized PageRank calculating node rankings for the locality information for seeds without calculating the entire graph and reusing the precomputed locality information for different locality combinations. For the identification of locality information, I present Impact Neighborhood Indexing (INI) to find impact neighborhoods with nodes' fingerprints propagation on the network. For the accuracy challenge, I introduce Degree Decoupled PageRank (D2PR) technique to improve the effectiveness of PageRank based knowledge discovery, especially considering the significance of neighbors and degree of a given node. To tackle the uncertain challenge, I introduce Uncertain Personalized PageRank (UPPR) to approximately compute personalized PageRank values on uncertainties of edge existence and Interval Personalized PageRank with Integration (IPPR-I) and Interval Personalized PageRank with Mean (IPPR-M) to compute ranking scores for the case when uncertainty exists on edge weights as interval values.
机译:节点接近度度量通常用于量化图中两个或多个节点之间的邻近程度或相关性。节点重要性度量主要用于查找图中有多少个节点重要。在许多预测和应用中,节点接近度/重要性的度量非常有效。尽管它们有效,但是仍然存在各种缺点。这种缺点之一是可伸缩性问题,这是因为它们在大尺寸图中的计算成本很高,而在度量上的另一个问题是当节点的重要性及其在图中的程度不相关时的准确性较低。另一个问题是,当图表信息不确定时,其有效性会降低。对于不确定的图,他们需要指数计算成本来考虑所有可能的世界来计算排名分数。;在本文中,我首先介绍了局部敏感,重用促进,近似个性化PageRank(LR-PPR),这是一种近似个性化PageRank为种子的位置信息计算节点排名,而无需计算整个图,并且针对不同的位置组合重新使用预先计算的位置信息。为了识别位置信息,我提出了影响邻域索引(INI)来查找具有节点指纹在网络上传播的影响邻域。对于精度挑战,我引入了度解耦PageRank(D2PR)技术,以提高基于PageRank的知识发现的有效性,特别是考虑了邻居的重要性和给定节点的度。为了解决不确定的挑战,我引入不确定的个性化PageRank(UPPR)来近似计算边缘存在性的不确定性上的个性化PageRank值,并使用带有积分的区间个性化PageRank(IPPR-I)和带有均值的区间个性化PageRank(IPPR-M)来计算排名当边缘权重作为区间值存在不确定性时对得分进行评分。

著录项

  • 作者

    Kim, Jung Hyun.;

  • 作者单位

    Arizona State University.;

  • 授予单位 Arizona State University.;
  • 学科 Computer science.
  • 学位 Ph.D.
  • 年度 2017
  • 页码 198 p.
  • 总页数 198
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:38:22

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