Naive Learning with Uninformed Agents

A. Banerjee, Emily Breza, Arun G. Chandrasekhar, M. Mobius
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引用次数: 35

Abstract

The DeGroot model has emerged as a credible alternative to the standard Bayesian model for studying learning on networks, offering a natural way to model naive learning in a complex setting. One unattractive aspect of this model is the assumption that the process starts with every node in the network having a signal. We study a natural extension of the DeGroot model that can deal with sparse initial signals. We show that an agent's social influence in this generalized DeGroot model is essentially proportional to the number of uninformed nodes who will hear about an event for the first time via this agent. This characterization result then allows us to relate network geometry to information aggregation. We identify an example of a network structure where essentially only the signal of a single agent is aggregated, which helps us pinpoint a condition on the network structure necessary for almost full aggregation. We then simulate the modeled learning process on a set of real world networks; for these networks there is on average 21.6% information loss. We also explore how correlation in the location of seeds can exacerbate aggregation failure. Simulations with real world network data show that with clustered seeding, information loss climbs to 35%.
无信息主体的朴素学习
DeGroot模型已经成为研究网络学习的标准贝叶斯模型的可靠替代方案,为复杂环境中的朴素学习建模提供了一种自然的方法。该模型的一个不吸引人的方面是,假设该过程在网络中的每个节点都有信号时开始。我们研究了可以处理稀疏初始信号的DeGroot模型的自然扩展。我们表明,在这个广义DeGroot模型中,智能体的社会影响基本上与通过该智能体第一次听到事件的不知情节点的数量成正比。这个表征结果允许我们将网络几何与信息聚合联系起来。我们确定了一个网络结构的示例,其中本质上只有单个代理的信号被聚合,这有助于我们确定网络结构上几乎完全聚合所必需的条件。然后,我们在一组现实世界的网络上模拟建模的学习过程;在这些网络中,平均有21.6%的信息丢失。我们还探讨了种子位置的相关性如何加剧聚集失败。对真实网络数据的模拟表明,使用聚类播种,信息损失攀升至35%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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