Graph representation learning has become a prominent tool for the characterization and understanding of the structure of networks in general and social networks in particular. Typically, these representation learning approaches embed the networks into a low-dimensional space in which the role of each individual can be characterized in terms of their latent position. A major current concern in social networks is the emergence of polarization and filter bubbles promoting a mindset of "us-versus-them" that may be defined by extreme positions believed to ultimately lead to political violence and the erosion of democracy. Such polarized networks are typically characterized in terms of signed links reflecting likes and dislikes. We propose the latent Signed relational Latent dIstance Model (SLIM) utilizing for the first time the Skellam distribution as a likelihood function for signed networks and extend the modeling to the characterization of distinct extreme positions by constraining the embedding space to polytopes. On four real social signed networks of polarization, we demonstrate that the model extracts low-dimensional characterizations that well predict friendships and animosity while providing interpretable visualizations defined by extreme positions when endowing the model with an embedding space restricted to polytopes.
翻译:典型地,这些代表学习方法将网络嵌入一个低维空间,其中每个个人的作用都可以以其潜在位置来定性。社会网络目前关注的一个主要问题是,两极分化和过滤泡沫的出现,这种泡沫会助长“us-us-us-theth”的心态,这种心态可能由被认为最终会导致政治暴力和民主侵蚀的极端立场所定义。这种极化的网络典型的特征是签名链接,反映相似和不喜欢。我们首次提出将Skellam 潜在连接端端点分布模型(SLIM)用作签名网络的可能功能,并将模型扩大到不同极端位置的特征,将嵌入空间限制在多端点。关于四个真正的社会签名的极化网络,我们证明模型提取了低维度特征,很好地预测了友谊和敌意,同时提供了极端位置定义的可解释可视化可视化特征,将模型的嵌入空间限制在多端点。</s>