Authors
Konstantin Avrachenkov, Vivek S Borkar, Arun Kadavankandy, Jithin K Sreedharan
Publication date
2016
Conference
Computational Social Networks: 5th International Conference, CSoNet 2016, Ho Chi Minh City, Vietnam, August 2-4, 2016, Proceedings 5
Pages
27-38
Publisher
Springer International Publishing
Description
Function estimation on Online Social Networks (OSN) is an important field of study in complex network analysis. An efficient way to do function estimation on large networks is to use random walks. We can then defer to the extensive theory of Markov chains to do error analysis of these estimators. In this work we compare two existing techniques, Metropolis-Hastings MCMC and Respondent-Driven Sampling, that use random walks to do function estimation and compare them with a new reinforcement learning based technique. We provide both theoretical and empirical analyses for the estimators we consider.
Total citations
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Scholar articles
K Avrachenkov, VS Borkar, A Kadavankandy… - … Social Networks: 5th International Conference, CSoNet …, 2016