Sublinear-Time Opinion Estimation in the Friedkin--Johnsen Model
WWW 2024(2024)
摘要
Online social networks are ubiquitous parts of modern societies and the
discussions that take place in these networks impact people's opinions on
diverse topics, such as politics or vaccination. One of the most popular models
to formally describe this opinion formation process is the Friedkin–Johnsen
(FJ) model, which allows to define measures, such as the polarization and the
disagreement of a network. Recently, Xu, Bao and Zhang (WebConf'21) showed that
all opinions and relevant measures in the FJ model can be approximated in
near-linear time. However, their algorithm requires the entire network and the
opinions of all nodes as input. Given the sheer size of online social networks
and increasing data-access limitations, obtaining the entirety of this data
might, however, be unrealistic in practice. In this paper, we show that node
opinions and all relevant measures, like polarization and disagreement, can be
efficiently approximated in time that is sublinear in the size of the network.
Particularly, our algorithms only require query-access to the network and do
not have to preprocess the graph. Furthermore, we use a connection between FJ
opinion dynamics and personalized PageRank, and show that in d-regular
graphs, we can deterministically approximate each node's opinion by only
looking at a constant-size neighborhood, independently of the network size. We
also experimentally validate that our estimation algorithms perform well in
practice.
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