网络信念形成的实验研究

Experiments on Belief Formation in Networks

Journal of the European Economic Association · 2018
被引 63
人大 AABS 4

中文导读

通过实验室实验研究社会网络中的信念形成,发现参与者会考虑网络结构并折扣相关邻居信息,但方式比贝叶斯学习更简单。

Abstract

Abstract We study belief formation in social networks using a laboratory experiment. Participants in our experiment observe an imperfect private signal on the state of the world and then simultaneously and repeatedly guess the state, observing the guesses of their network neighbors in each period. Across treatments we vary the network structure and the amount of information participants have about the network. Our first result shows that information about the network structure matters and in particular affects the share of correct guesses in the network. This is inconsistent with the widely used naive (deGroot) model. The naive model is, however, consistent with a larger share of individual decisions than the competing Bayesian model, whereas both models correctly predict only about 25%–30% of consensus beliefs. We then estimate a larger class of models and find that participants do indeed take network structure into account when updating beliefs. In particular they discount information from neighbors if it is correlated, but in a more rudimentary way than a Bayesian learner would.

信念形成社会网络实验经济学信息更新