论文标题

建模由社交网络中互动引起的记忆烙印

Modeling Memory Imprints Induced by Interactions in Social Networks

论文作者

Flamino, James, DeVito, Ross, Lizardo, Omar, Szymanski, Boleslaw K.

论文摘要

记忆烙印具有关系的意义,不断发展。参与人际关系的人之间的社会互动和此类事件之间的衰落,使他们的关系改变了,从而使他们的关系得到了推动。尽管社交网络中关系发展的重要性,但很少有工作探讨长时间的互动与人们的关系重要性的记忆烙印如何相关。在本文中,我们通过调整众所周知的认知科学模型来代表记忆动态。使用两个唯一的纵向数据集,我们符合模型的参数,以最大程度地达成了从呼叫详细信息记录预测的节点的关系强度的记忆烙印,并具有该节点的强度订购的该节点的关系列表。我们发现,接受了一个人群培训的模型不仅可以预测该人群,而且还预测了一个人群,这表明了无关个体之间社会互动的记忆烙印的普遍性。本文为研究社会互动作为记忆印记的建模奠定了基础,并可能将其用作早期发现记忆故障的人的潜在使用。

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.

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