Title
Efficient Learning for Selecting Important Nodes in Random Network
Abstract
In this article, we consider the problem of selecting important nodes in a random network, where the nodes connect to each other randomly with certain transition probabilities. The node importance is characterized by the stationary probabilities of the corresponding nodes in a Markov chain defined over the network, as in Google's PageRank. Unlike a deterministic network, the transition probabilities in a random network are unknown but can be estimated by sampling. Under a Bayesian learning framework, we apply the first-order Taylor expansion and normal approximation to provide a computationally efficient posterior approximation of the stationary probabilities. In order to maximize the probability of correct selection, we propose a dynamic sampling procedure, which uses not only posterior means and variances of certain interaction parameters between different nodes, but also the sensitivities of the stationary probabilities with respect to each interaction parameter. Numerical experiment results demonstrate the superiority of the proposed sampling procedure.
Year
DOI
Venue
2021
10.1109/TAC.2020.2989753
IEEE Transactions on Automatic Control
Keywords
DocType
Volume
Bayesian learning,dynamic sampling,Markov chain,network,ranking and selection (R&S)
Journal
66
Issue
ISSN
Citations 
3
0018-9286
0
PageRank 
References 
Authors
0.34
13
4
Name
Order
Citations
PageRank
Haidong Li152.77
Xiaoyun Xu2103.54
Yijie Peng33212.59
Chun-Hung Chen4216.85