Towards Effective Planning Strategies for Dynamic Opinion Networks
Bharath Muppasani, Protik Nag, Vignesh Narayanan, Biplav Srivastava,, and Michael N. Huhns

TL;DR
This paper develops neural network-based planning strategies to effectively disseminate accurate information and control misinformation spread in dynamic opinion networks, addressing computational challenges in large-scale networks.
Contribution
It introduces a ranking algorithm and reinforcement learning framework for scalable, effective intervention planning in dynamic opinion networks with complex propagation models.
Findings
Ranking-based classifiers improve infection rate control in small networks.
Reward strategies focusing on key metrics outperform faster blocking approaches.
Graph convolutional network planners achieve lower infection rates across diverse network configurations.
Abstract
In this study, we investigate the under-explored intervention planning aimed at disseminating accurate information within dynamic opinion networks by leveraging learning strategies. Intervention planning involves identifying key nodes (search) and exerting control (e.g., disseminating accurate or official information through the nodes) to mitigate the influence of misinformation. However, as the network size increases, the problem becomes computationally intractable. To address this, we first introduce a ranking algorithm to identify key nodes for disseminating accurate information, which facilitates the training of neural network classifiers that provide generalized solutions for the search and planning problems. Second, we mitigate the complexity of label generation, which becomes challenging as the network grows, by developing a reinforcement learning-based centralized dynamic…
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Code & Models
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Taxonomy
TopicsOpinion Dynamics and Social Influence
