Authors
Konstantin Avrachenkov, Vivek S Borkar, Arun Kadavankandy, Jithin K Sreedharan
Publication date
2018/12
Journal
Computational social networks
Volume
5
Pages
1-19
Publisher
Springer International Publishing
Description
Background
In the framework of network sampling, random walk (RW) based estimation techniques provide many pragmatic solutions while uncovering the unknown network as little as possible. Despite several theoretical advances in this area, RW based sampling techniques usually make a strong assumption that the samples are in stationary regime, and hence are impelled to leave out the samples collected during the burn-in period.
Methods
This work proposes two sampling schemes without burn-in time constraint to estimate the average of an arbitrary function defined on the network nodes, for example, the average age of users in a social network. The central idea of the algorithms lies in exploiting regeneration of RWs at revisits to an aggregated super-node or to a set of nodes, and in strategies to enhance the frequency of such regenerations …
Total citations
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