Memory imprints of the significance of relationships are constantly evolving. They are boosted by social interactions among people involved in relationships, and decay between such events, causing the relationships to change. Despite the importance of the evolution of relationships in social networks, there is little work exploring how interactions over extended periods correlate with people's memory imprints of relationship importance. In this paper, we represent memory dynamics by adapting a well-known cognitive science model. Using two unique longitudinal datasets, we fit the model's parameters to maximize agreement of the memory imprints of relationship strengths of a node predicted from call detail records with the ground-truth list of relationships of this node ordered by their strength. We find that this model, trained on one population, predicts not only on this population but also on a different one, suggesting the universality of memory imprints of social interactions among unrelated individuals. This paper lays the foundation for studying the modeling of social interactions as memory imprints, and its potential use as an unobtrusive tool to early detection of individuals with memory malfunctions.
翻译:关系重要性的记忆印记正在不断演变。 这些印记被参与关系的人之间的社会互动以及这些事件之间的衰变所推动,从而导致关系发生变化。 尽管社交网络关系演变的重要性,但很少探讨长期互动与人记忆印记关系重要性的关系。 在本文中,我们通过修改一个众所周知的认知科学模型来代表记忆动态。我们用两个独特的纵向数据集,将模型的参数匹配到最大限度地一致从调用细节记录中预测的节点的记忆印印印关系的力量,而调用细节记录则以其强度所决定的该节点关系的地底真相清单。我们发现,这一模型不仅针对这一人群,而且针对不同的人群进行预测,表明不相干的个人之间社会互动的记忆印记的普遍性。这份文件为研究社会互动模型作为记忆印记的基础奠定了基础,并有可能作为早期发现记忆故障的个人的不显性工具。