Title
Unbiased sampling in directed social graph
Abstract
Microblogging services, such as Twitter, are among the most important online social networks(OSNs). Different from OSNs such as Facebook, the topology of microblogging service is a directed graph instead of an undirected graph. Recently, due to the explosive increase of population size, graph sampling has started to play a critical role in measurement and characterization studies of such OSNs. However, previous studies have only focused on the unbiased sampling of undirected social graphs. In this paper, we study the unbiased sampling algorithm for directed social graphs. Based on the traditional Metropolis-Hasting Random Walk (MHRW) algorithm, we propose an unbiased sampling method for directed social graphs(USDSG). Using this method, we get the first, to the best of our knowledge, unbiased sample of directed social graphs. Through extensive experiments comparing with the "ground truth" (UNI, obtained through uniform sampling of directed graph nodes), we show that our method can achieve excellent performance in directed graph sampling and the error to UNI is less than 10%.
Year
DOI
Venue
2010
10.1145/1851182.1851231
SIGCOMM
Keywords
Field
DocType
ground truth,random walk,sampling methods,metropolis hastings,population size,directed graph
Social network,Social graph,Random graph,Computer science,Theoretical computer science,Artificial intelligence,Distributed computing,Social media,Microblogging,Directed graph,Sampling (statistics),Random geometric graph,Graph (abstract data type),Machine learning
Conference
Volume
Issue
ISSN
40
4
0146-4833
Citations 
PageRank 
References 
9
0.73
3
Authors
6
Name
Order
Citations
PageRank
Tianyi Wang129427.78
Yang Chen237533.50
Zengbin Zhang353627.05
Peng Sun4515.04
Beixing Deng516318.34
Xing Li669892.13