论文标题
通过有限召回的重复影响
Influence of Repetition through Limited Recall
论文作者
论文摘要
收到许多信号的决策者会受到不完美的召回。当从社交媒体平台上汇总许多发件人的信息的供稿中学习,这一点尤其重要。在本文中,我们研究了一种从饲料中学习的程式化模型,并突出了由于不完善的召回而引起的效率低下的模型。在我们的模型中,未能回忆特定的消息来自造成干扰的消息的积累。我们根据她发送消息和干扰力量的速度来表征每个发件人的影响。我们的分析表明,不完美的召回不仅会导致有限人群中的双重计数和极端观点,而且会阻碍接收者随着发件人人数的增加而学习真实状态的能力。我们在一个在线实验中估计了干扰的力量,在线实验中,参与者会暴露于(非信息)重复的消息,他们需要估计他人的意见。结果表明,干扰起着重要作用,并且在彼此之间不同意的参与者中较弱。我们的工作对信息在网络中的扩散有影响,尤其是当它是错误的时候,因为它是共享和重复的,而不是真实的信息。
Decision makers who receive many signals are subject to imperfect recall. This is especially important when learning from feeds that aggregate messages from many senders on social media platforms. In this paper, we study a stylized model of learning from feeds and highlight the inefficiencies that arise due to imperfect recall. In our model, failure to recall a specific message comes from the accumulation of messages which creates interference. We characterize the influence of each sender according to the rate at which she sends messages and to the strength of interference. Our analysis indicates that imperfect recall not only leads to double-counting and extreme opinions in finite populations, but also impedes the ability of the receiver to learn the true state as the population of the senders increases. We estimate the strength of interference in an online experiment where participants are exposed to (non-informative) repeated messages and they need to estimate the opinion of others. Results show that interference plays a significant role and is weaker among participants who disagree with each other. Our work has implication for the diffusion of information in networks, especially when it is false because it is shared and repeated more than true information.