Networks of social interactions are the substrate upon which civilizations are built. Often, we create new bonds with people that we like or feel that our relationships are damaged through the intervention of third parties. Despite their importance and the huge impact that these processes have in our lives, quantitative scientific understanding of them is still in its infancy, mainly due to the difficulty of collecting large datasets of social networks including individual attributes. In this work, we present a thorough study of real social networks of 13 schools, with more than 3,000 students and 60,000 declared positive and negative relations, including tests for personal traits of all the students. We introduce a metric -- the `triadic influence' -- that measures the influence of nearest-neighbors in the relationships of their contacts. We use neural networks to predict the relationships and to extract the probability that two students are friends or enemies depending on their personal attributes or the triadic influence. We alternatively use a high-dimensional embedding of the network structure to also predict the relationships. Remarkably, the triadic influence (a simple one-dimensional metric) achieves the highest accuracy at predicting the relationship between two students. We postulate that the probabilities extracted from the neural networks -- functions of the triadic influence and the personalities of the students -- control the evolution of real social networks, opening a new avenue for the quantitative study of these systems.
翻译:社会互动网络是文明所赖以建立的基础。我们常常与喜欢或感觉我们的关系因第三方的干预而受到损害的人建立新的纽带。尽管这些关系的重要性和这些过程对我们生活的影响巨大,但对这些过程的定量科学理解仍处于萌芽阶段,这主要是因为难以收集包括个人属性在内的大型社会网络数据集。在这项工作中,我们展示了对13所学校的真正社会网络的透彻研究,这些网络有3 000多名学生,60 000名被宣布为积极和消极关系,包括所有学生的个人特征测试。我们引入了一种衡量标准——`三角影响',衡量近邻对彼此关系的影响。我们使用神经网络来预测关系,并提取两个学生根据个人属性或三角影响成为朋友或敌人的可能性。我们用高维的网络结构来预测关系。值得注意的是,三维影响(简单的一维度衡量标准)在预测两个学生之间相互关系的准确度方面达到了最高精确度。我们用智能网络来预测这两个学生的三角关系,并提取了这些社交网络的三角网络的三角关系。我们用直径来控制这些社交网络的三角关系。