The adaptive social learning paradigm helps model how networked agents are able to form opinions on a state of nature and track its drifts in a changing environment. In this framework, the agents repeatedly update their beliefs based on private observations and exchange the beliefs with their neighbors. In this work, it is shown how the sequence of publicly exchanged beliefs over time allows users to discover rich information about the underlying network topology and about the flow of information over the graph. In particular, it is shown that it is possible (i) to identify the influence of each individual agent to the objective of truth learning, (ii) to discover how well-informed each agent is, (iii) to quantify the pairwise influences between agents, and (iv) to learn the underlying network topology. The algorithm derived herein is also able to work under non-stationary environments where either the true state of nature or the graph topology are allowed to drift over time. We apply the proposed algorithm to different subnetworks of Twitter users, and identify the most influential and central agents by using their public tweets (posts).
翻译:适应性社会学习模式有助于模拟网络代理人如何形成关于自然状态的意见,并跟踪其在变化环境中的漂移情况。在这个框架内,代理人根据私人观察反复更新其信仰,并与邻居交流信仰。在这项工作中,可以显示公众交流信仰的顺序如何使用户在一段时间内能够发现关于基本网络地形和图上信息流的丰富信息。特别是,可以(一) 查明每个代理人对真相学习目标的影响,(二) 查明每个代理人如何充分了解情况,(三) 量化代理人之间的对称影响,(四) 学习基本网络地形。这里得出的算法还可以在非静止环境中工作,在这种环境中,自然的真实状态或图表地形可以随时间飘移。我们将提议的算法应用于不同子网络的推特用户,并通过其公开推文(poss)确定最有影响力和最核心的代理人。</s>