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集体智慧:猜谜游戏中邻居信息的聚合

Collective Intelligence: Aggregation of Information from Neighbors in a Guessing Game.

作者信息

Pérez Toni, Zamora Jordi, Eguíluz Víctor M

机构信息

Instituto de Física Interdisciplinar y Sistemas Complejos IFISC (CSIC-UIB), E07122 Palma de Mallorca, Spain.

出版信息

PLoS One. 2016 Apr 19;11(4):e0153586. doi: 10.1371/journal.pone.0153586. eCollection 2016.

DOI:10.1371/journal.pone.0153586
PMID:27093274
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC4836688/
Abstract

Complex systems show the capacity to aggregate information and to display coordinated activity. In the case of social systems the interaction of different individuals leads to the emergence of norms, trends in political positions, opinions, cultural traits, and even scientific progress. Examples of collective behavior can be observed in activities like the Wikipedia and Linux, where individuals aggregate their knowledge for the benefit of the community, and citizen science, where the potential of collectives to solve complex problems is exploited. Here, we conducted an online experiment to investigate the performance of a collective when solving a guessing problem in which each actor is endowed with partial information and placed as the nodes of an interaction network. We measure the performance of the collective in terms of the temporal evolution of the accuracy, finding no statistical difference in the performance for two classes of networks, regular lattices and random networks. We also determine that a Bayesian description captures the behavior pattern the individuals follow in aggregating information from neighbors to make decisions. In comparison with other simple decision models, the strategy followed by the players reveals a suboptimal performance of the collective. Our contribution provides the basis for the micro-macro connection between individual based descriptions and collective phenomena.

摘要

复杂系统展现出聚合信息并呈现协调活动的能力。就社会系统而言,不同个体之间的互动会导致规范、政治立场趋势、观点、文化特征甚至科学进步的出现。在维基百科和Linux等活动中可以观察到集体行为的例子,在这些活动中,个体为了社区的利益聚合他们的知识,还有公民科学,其中集体解决复杂问题的潜力得到了利用。在这里,我们进行了一项在线实验,以研究集体在解决一个猜谜问题时的表现,在这个问题中,每个参与者都被赋予了部分信息,并被放置为一个互动网络的节点。我们根据准确性的时间演变来衡量集体的表现,发现对于两类网络——规则晶格网络和随机网络,其表现没有统计差异。我们还确定,贝叶斯描述捕捉了个体在从邻居那里聚合信息以做出决策时所遵循的行为模式。与其他简单决策模型相比,参与者所遵循的策略揭示了集体的次优表现。我们的贡献为基于个体的描述与集体现象之间的微观 - 宏观联系提供了基础。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3ff6/4836688/da12945be11d/pone.0153586.g007.jpg
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