Publication View

Ranking WebSites, a Probabilistic View (2008)

Abstract
In this paper we suggest evaluating the importance of a website with the mean fre-quency of visiting the website for the Markov chain on the Internet Graph describing random surfing. We show that this mean frequency is equal to the sum of the PageRanks of all the webpages in that website (hence is referred to as PageRankSum), and propose a novel algorithm ’AggregateRank ’ based on the theory of stochastic complement to calcu-late the rank of a website. The AggregateRank Algorithm gives a good approximation of the PageRankSum accurately, while the corresponding computational complexity is much lower than PageRankSum. By constructing return-time Markov chains restricted to each website, we describe also the probabilistic relation between PageRank and AggregateR-ank. The complexity of the AggregateRank Algorithm, the error bound of the estimation, and experiments are discussed at the end of the paper.

Publication details
Download http://citeseerx.ist.psu.edu/viewdoc/summary?doi=10.1.1.88.871
Source http://www.amt.ac.cn/member/mazhiming/papers/Ranking_Websites.pdf
Contributors CiteSeerX
Repository CiteSeerX - Scientific Literature Digital Library and Search Engine (United States)
Keywords Website, Web search and mining, PageRank, AggregateRank, Markov chain
Type text
Language English
Relation 10.1.1.120.3875, 10.1.1.31.1768, 10.1.1.25.5619, 10.1.1.13.42, 10.1.1.2.4767, 10.1.1.102.9018, 10.1.1.12.3081, 10.1.1.65.676, 10.1.1.52.5612, 10.1.1.66.7200, 10.1.1.62.8585, 10.1.1.2.4477, 10.1.1.120.5668, 10.1.1.121.8014