论文标题
从社交互动中学习图形影响
Learning Graph Influence from Social Interactions
论文作者
论文摘要
在社会学习中,代理人通过交换当地信息来形成对某些假设的看法或信念。这项工作考虑了最近的弱图范式,其中将网络分配到发送和接收组件中,而前者有可能对后者发挥霸气作用。这种图形结构在社交平台上很普遍。我们将不会关注直接的社会学习问题(其中检查了代理人学习的内容),而是在双重或反向学习问题上(该问题研究了代理商的学习方式)。具体而言,从对某些代理商的信念流观察,我们想检查是否可以学习从将网络中的组件发送到这些接收代理的连接强度(影响)。
In social learning, agents form their opinions or beliefs about certain hypotheses by exchanging local information. This work considers the recent paradigm of weak graphs, where the network is partitioned into sending and receiving components, with the former having the possibility of exerting a domineering effect on the latter. Such graph structures are prevalent over social platforms. We will not be focusing on the direct social learning problem (which examines what agents learn), but rather on the dual or reverse learning problem (which examines how agents learned). Specifically, from observations of the stream of beliefs at certain agents, we would like to examine whether it is possible to learn the strength of the connections (influences) from sending components in the network to these receiving agents.