Asymptotic properties of distributed social sampling algorithm

被引:0
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作者
Qian Liu
Xingkang He
Haitao Fang
机构
[1] Chinese Academy of Sciences,The Key Laboratory of Systems and Control, Academy of Mathematics and Systems Science
[2] University of Chinese Academy of Sciences,School of Mathematical Sciences
[3] KTH Royal Institute of Technology,ACCESS Linnaeus Centre, School of Electrical Engineering and Computer Science
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关键词
social networks; opinion formation; social sampling; stochastic approximation; random networks; asymptotic normality;
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摘要
Social sampling is a novel randomized message passing protocol inspired by social communication for opinion formation in social networks. In a typical social sampling algorithm, each agent holds a sample from the empirical distribution of social opinions at initial time, and it collaborates with other agents in a distributed manner to estimate the initial empirical distribution by randomly sampling a message from current distribution estimate. In this paper, we focus on analyzing the theoretical properties of the distributed social sampling algorithm over random networks. First, we provide a framework based on stochastic approximation to study the asymptotic properties of the algorithm. Then, under mild conditions, we prove that the estimates of all agents converge to a common random distribution, which is composed of the initial empirical distribution and the accumulation of quantized error. Besides, by tuning algorithm parameters, we prove the strong consistency, namely, the distribution estimates of agents almost surely converge to the initial empirical distribution. Furthermore, the asymptotic normality of estimation error generated by distributed social sample algorithm is addressed. Finally, we provide a numerical simulation to validate the theoretical results of this paper.
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