PageRank随机系统模型的参数估计

Cody E. Clifton, B. Pasik-Duncan
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引用次数: 2

摘要

PageRank算法被Google用作分层索引网页的一种方式,以提供相关和有信誉的搜索结果。从根本上说,这个算法依赖于万维网的超文本特性;事实上,PageRank向量可以简单地基于网络中每个页面的超链接结构来计算。本文考虑了一个动态由随机系统描述的PageRank模型,并在该模型中建立了未知参数最小二乘估计的强相合性。此外,受最近关于计算PageRank的分布式随机方法的工作的启发,我们表明最小二乘估计量在分布式框架内保持强一致性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Parameter Estimation in a Stochastic System Model for PageRank
The PageRank algorithm is used by Google as a way of hierarchically indexing web pages in order to provide relevant and reputable search results. Fundamentally, this algorithm relies on the hypertextual nature of the World Wide Web; indeed, the PageRank vector can be computed based simply on the hyperlink structure of every page in the web. In this paper, we consider a model for PageRank whose dynamics are described by a stochastic system and we establish strong consistency of the least squares estimator of an unknown parameter in this system. Furthermore, motivated by recent work on distributed randomized methods for computing PageRank, we show that the least squares estimator remains strongly consistent within a distributed framework.
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