Opinion Dynamics with Multiple Adversaries
Akhil Jalan, Marios Papachristou

TL;DR
This paper models how multiple strategic actors can manipulate opinion dynamics in social networks, leading to increased polarization, and proposes algorithms to detect and mitigate such manipulation.
Contribution
It introduces a multi-actor manipulation model, characterizes the Nash Equilibrium, and develops algorithms for detection and identification of strategic actors.
Findings
Strategic manipulation significantly increases polarization.
Algorithms accurately detect manipulation in real datasets.
Provides bounds on the impact of misreporting.
Abstract
Opinion dynamics models how the publicly expressed opinions of users in a social network coevolve according to their neighbors as well as their own intrinsic opinion. Motivated by the real-world manipulation of social networks during the 2016 US elections and the 2019 Hong Kong protests, a growing body of work models the effects of a strategic actor who interferes with the network to induce disagreement or polarization. We lift the assumption of a single strategic actor by introducing a model in which any subset of network users can manipulate network outcomes. They do so by acting according to a fictitious intrinsic opinion. Strategic actors can have conflicting goals, and push competing narratives. We characterize the Nash Equilibrium of the resulting meta-game played by the strategic actors. Experiments on real-world social network datasets from Twitter, Reddit, and Political Blogs…
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Taxonomy
TopicsOpinion Dynamics and Social Influence · Electoral Systems and Political Participation
