Modeling the Impact of Timeline Algorithms on Opinion Dynamics Using Low-rank Updates

ArXiv Pub Date : 2024-02-15 DOI:10.48550/arXiv.2402.10053
Tianyi Zhou, Stefan Neumann, Kiran Garimella, A. Gionis
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Abstract

Timeline algorithms are key parts of online social networks, but during recent years they have been blamed for increasing polarization and disagreement in our society. Opinion-dynamics models have been used to study a variety of phenomena in online social networks, but an open question remains on how these models can be augmented to take into account the fine-grained impact of user-level timeline algorithms. We make progress on this question by providing a way to model the impact of timeline algorithms on opinion dynamics. Specifically, we show how the popular Friedkin--Johnsen opinion-formation model can be augmented based on aggregate information, extracted from timeline data. We use our model to study the problem of minimizing the polarization and disagreement; we assume that we are allowed to make small changes to the users' timeline compositions by strengthening some topics of discussion and penalizing some others. We present a gradient descent-based algorithm for this problem, and show that under realistic parameter settings, our algorithm computes a $(1+\varepsilon)$-approximate solution in time $\tilde{O}(m\sqrt{n} \lg(1/\varepsilon))$, where $m$ is the number of edges in the graph and $n$ is the number of vertices. We also present an algorithm that provably computes an $\varepsilon$-approximation of our model in near-linear time. We evaluate our method on real-world data and show that it effectively reduces the polarization and disagreement in the network. Finally, we release an anonymized graph dataset with ground-truth opinions and more than 27\,000 nodes (the previously largest publicly available dataset contains less than 550 nodes).
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利用低等级更新模拟时间轴算法对舆论动态的影响
时间轴算法是在线社交网络的关键部分,但近年来它们却被指责为加剧社会两极分化和分歧的罪魁祸首。舆论动力学模型已被用于研究在线社交网络中的各种现象,但如何增强这些模型以考虑到用户级时间轴算法的细粒度影响,仍是一个未决问题。我们提供了一种方法来模拟时间轴算法对舆论动态的影响,从而在这一问题上取得了进展。具体来说,我们展示了流行的弗里德金-约翰逊(Friedkin-Johnsen)舆论形成模型如何基于从时间轴数据中提取的综合信息进行扩展。我们使用我们的模型来研究最小化两极分化和分歧的问题;我们假设允许我们通过加强一些讨论话题和惩罚另一些讨论话题来对用户的时间轴构成进行微小的改变。我们针对这个问题提出了一种基于梯度下降的算法,并证明在现实的参数设置下,我们的算法可以在 $\tilde{O}(m\sqrt{n} 的时间内计算出一个 $(1+\varepsilon)$ 近似解。\lg(1/\varepsilon))$,其中 $m$ 是图中边的数量,$n$ 是顶点的数量。我们还提出了一种算法,可以证明它能在接近线性的时间内计算出我们模型的 $\varepsilon$ 近似值。我们在真实世界的数据上评估了我们的方法,结果表明它能有效减少网络中的两极分化和分歧。最后,我们发布了一个匿名图数据集,其中包含地面实况意见和超过 27\,000 个节点(之前最大的公开数据集包含不到 550 个节点)。
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