Opinion Dynamics with Varying Susceptibility to Persuasion via Non-Convex Local Search
Rediet Abebe, T-H. Hubert Chan, Jon Kleinberg, Zhibin Liang, and David Parkes, Mauro Sozio, Charalampos E. Tsourakakis

TL;DR
This paper introduces a new framework for social influence that considers varying susceptibility to persuasion, analyzing the convergence of opinion dynamics and developing efficient algorithms for influence minimization in large networks.
Contribution
It models susceptibility variation in opinion dynamics, proves the non-convexity of the influence minimization problem, and shows local optima are globally optimal, enabling scalable algorithms.
Findings
Any local optimum is also a global optimum.
Efficient algorithms solve large-scale influence minimization.
Heuristics perform well on budgeted influence reduction.
Abstract
A long line of work in social psychology has studied variations in people's susceptibility to persuasion -- the extent to which they are willing to modify their opinions on a topic. This body of literature suggests an interesting perspective on theoretical models of opinion formation by interacting parties in a network: in addition to considering interventions that directly modify people's intrinsic opinions, it is also natural to consider interventions that modify people's susceptibility to persuasion. In this work, motivated by this fact we propose a new framework for social influence. Specifically, we adopt a popular model for social opinion dynamics, where each agent has some fixed innate opinion, and a resistance that measures the importance it places on its innate opinion; agents influence one another's opinions through an iterative process. Under non-trivial conditions, this…
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Taxonomy
TopicsOpinion Dynamics and Social Influence · Complex Network Analysis Techniques · Game Theory and Applications
