A recently proposed graph-theoretic metric, the influence gap, has shown to be a reliable predictor of the effect of social influence in two-party elections, albeit only tested on regular and scale-free graphs. Here, we investigate whether the influence gap is able to predict the outcome of multi-party elections on networks exhibiting community structure, i.e., made of highly interconnected components, and therefore more resembling of real-world interaction. To encode communities we build on the classical model of caveman graphs, which we extend to a richer graph family that displays different levels of homophily, i.e., how much connections and opinions are intertwined. First, we study the predictive power of the influence gap in the presence of communities. We show that when there is no clear initial majority the influence gap is not a good predictor of the election outcome. When we instead allow for varying majorities, although the influence gap improves as a predictor, counting the initial partisan majority does consistently better, across all levels of homophily. Second, we study the combined effect of the more predictive metrics, as function of the homophily levels. Using regression models, we demonstrate that the influence gap combined with the initial votes count does increase the overall predictive power for some levels of homophily. Third, we study elections with more than two parties. Specifically, we extend the definition of the influence gap to any number of parties, considering various generalisations, and show that the initial votes count has an even higher predictive power when compared to influence gap than it did in the two-party case.
翻译:最近提出的一个图表理论衡量标准,即影响差距,已经表明,它是两党选举中社会影响影响的可靠预测,尽管只是定期和规模无影响图表的测试。在这里,我们调查影响差距是否能够预测显示社区结构的网络多党选举的结果,即由高度相互关联的组成部分组成的多党选举结果,因此更类似于现实世界的互动。为了将社区编码,我们以典型的洞穴图模型为基础,我们把这个模型扩展到一个更富的图表家庭,显示不同层次的同质关系和观点。首先,我们研究在社区存在时影响差距的预测力。我们发现,在最初没有明显多数人时,影响差距并不是选举结果的良好预测力。当我们允许不同的多数人,尽管影响差距作为预测力而有所改进时,计算最初的党派多数人数比所有等级都一致。第二,我们研究较预测性指标差距的合并效应,即更密切的关联性联系和观点是社区存在的差距。我们研究了两个政党在最初的政党中的影响,我们比较了两个政党的等级,我们比较了两个政党的等级,我们比较了两个政党的等级的模型,我们比较了某种程度的倒退,我们比较了两个政党的影响。