Dynamic PageRank using Evolving Teleportation
Social and Information Networks
2012-03-29 v1 Information Retrieval
Dynamical Systems
Physics and Society
Machine Learning
Abstract
The importance of nodes in a network constantly fluctuates based on changes in the network structure as well as changes in external interest. We propose an evolving teleportation adaptation of the PageRank method to capture how changes in external interest influence the importance of a node. This framework seamlessly generalizes PageRank because the importance of a node will converge to the PageRank values if the external influence stops changing. We demonstrate the effectiveness of the evolving teleportation on the Wikipedia graph and the Twitter social network. The external interest is given by the number of hourly visitors to each page and the number of monthly tweets for each user.
Cite
@article{arxiv.1203.6098,
title = {Dynamic PageRank using Evolving Teleportation},
author = {Ryan A. Rossi and David F. Gleich},
journal= {arXiv preprint arXiv:1203.6098},
year = {2012}
}
Comments
WAW 2012